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					2077 lines
				
				61 KiB
			
		
		
			
		
	
	
					2077 lines
				
				61 KiB
			| 
								 
											3 years ago
										 
									 | 
							
								"""
							 | 
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| 
								 | 
							
								====================================================
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| 
								 | 
							
								Chebyshev Series (:mod:`numpy.polynomial.chebyshev`)
							 | 
						||
| 
								 | 
							
								====================================================
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								This module provides a number of objects (mostly functions) useful for
							 | 
						||
| 
								 | 
							
								dealing with Chebyshev series, including a `Chebyshev` class that
							 | 
						||
| 
								 | 
							
								encapsulates the usual arithmetic operations.  (General information
							 | 
						||
| 
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								on how this module represents and works with such polynomials is in the
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| 
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								docstring for its "parent" sub-package, `numpy.polynomial`).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								Classes
							 | 
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| 
								 | 
							
								-------
							 | 
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| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								.. autosummary::
							 | 
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								   :toctree: generated/
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| 
								 | 
							
								
							 | 
						||
| 
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								   Chebyshev
							 | 
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| 
								 | 
							
								
							 | 
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| 
								 | 
							
								
							 | 
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| 
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								Constants
							 | 
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| 
								 | 
							
								---------
							 | 
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| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								.. autosummary::
							 | 
						||
| 
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								   :toctree: generated/
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								   chebdomain
							 | 
						||
| 
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								   chebzero
							 | 
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| 
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								   chebone
							 | 
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| 
								 | 
							
								   chebx
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
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								Arithmetic
							 | 
						||
| 
								 | 
							
								----------
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								.. autosummary::
							 | 
						||
| 
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								   :toctree: generated/
							 | 
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| 
								 | 
							
								
							 | 
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| 
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								   chebadd
							 | 
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| 
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								   chebsub
							 | 
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| 
								 | 
							
								   chebmulx
							 | 
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| 
								 | 
							
								   chebmul
							 | 
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| 
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								   chebdiv
							 | 
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| 
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								   chebpow
							 | 
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| 
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								   chebval
							 | 
						||
| 
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								   chebval2d
							 | 
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| 
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								   chebval3d
							 | 
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| 
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								   chebgrid2d
							 | 
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| 
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								   chebgrid3d
							 | 
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| 
								 | 
							
								
							 | 
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								Calculus
							 | 
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| 
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								--------
							 | 
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| 
								 | 
							
								
							 | 
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| 
								 | 
							
								.. autosummary::
							 | 
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								   :toctree: generated/
							 | 
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| 
								 | 
							
								
							 | 
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| 
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								   chebder
							 | 
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| 
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								   chebint
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| 
								 | 
							
								
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								Misc Functions
							 | 
						||
| 
								 | 
							
								--------------
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								.. autosummary::
							 | 
						||
| 
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								   :toctree: generated/
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
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								   chebfromroots
							 | 
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								   chebroots
							 | 
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								   chebvander
							 | 
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								   chebvander2d
							 | 
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| 
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								   chebvander3d
							 | 
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| 
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								   chebgauss
							 | 
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								   chebweight
							 | 
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| 
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								   chebcompanion
							 | 
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								   chebfit
							 | 
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								   chebpts1
							 | 
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								   chebpts2
							 | 
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| 
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								   chebtrim
							 | 
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								   chebline
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								   cheb2poly
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								   poly2cheb
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								   chebinterpolate
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								See also
							 | 
						||
| 
								 | 
							
								--------
							 | 
						||
| 
								 | 
							
								`numpy.polynomial`
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
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								Notes
							 | 
						||
| 
								 | 
							
								-----
							 | 
						||
| 
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								The implementations of multiplication, division, integration, and
							 | 
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								differentiation use the algebraic identities [1]_:
							 | 
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| 
								 | 
							
								
							 | 
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| 
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								.. math::
							 | 
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								    T_n(x) = \\frac{z^n + z^{-n}}{2} \\\\
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								    z\\frac{dx}{dz} = \\frac{z - z^{-1}}{2}.
							 | 
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| 
								 | 
							
								
							 | 
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								where
							 | 
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| 
								 | 
							
								
							 | 
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| 
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								.. math:: x = \\frac{z + z^{-1}}{2}.
							 | 
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| 
								 | 
							
								
							 | 
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								These identities allow a Chebyshev series to be expressed as a finite,
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								symmetric Laurent series.  In this module, this sort of Laurent series
							 | 
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								is referred to as a "z-series."
							 | 
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| 
								 | 
							
								
							 | 
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| 
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								References
							 | 
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| 
								 | 
							
								----------
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								.. [1] A. T. Benjamin, et al., "Combinatorial Trigonometry with Chebyshev
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								  Polynomials," *Journal of Statistical Planning and Inference 14*, 2008
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								  (https://web.archive.org/web/20080221202153/https://www.math.hmc.edu/~benjamin/papers/CombTrig.pdf, pg. 4)
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								"""
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								import numpy as np
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								import numpy.linalg as la
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								from numpy.core.multiarray import normalize_axis_index
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							 | 
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								from . import polyutils as pu
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								from ._polybase import ABCPolyBase
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								__all__ = [
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								    'chebzero', 'chebone', 'chebx', 'chebdomain', 'chebline', 'chebadd',
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								    'chebsub', 'chebmulx', 'chebmul', 'chebdiv', 'chebpow', 'chebval',
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| 
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								    'chebder', 'chebint', 'cheb2poly', 'poly2cheb', 'chebfromroots',
							 | 
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								    'chebvander', 'chebfit', 'chebtrim', 'chebroots', 'chebpts1',
							 | 
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| 
								 | 
							
								    'chebpts2', 'Chebyshev', 'chebval2d', 'chebval3d', 'chebgrid2d',
							 | 
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| 
								 | 
							
								    'chebgrid3d', 'chebvander2d', 'chebvander3d', 'chebcompanion',
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| 
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								    'chebgauss', 'chebweight', 'chebinterpolate']
							 | 
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| 
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							 | 
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								chebtrim = pu.trimcoef
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| 
								 | 
							
								
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								#
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								# A collection of functions for manipulating z-series. These are private
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| 
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								# functions and do minimal error checking.
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								#
							 | 
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								 | 
							
								
							 | 
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| 
								 | 
							
								def _cseries_to_zseries(c):
							 | 
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| 
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								    """Convert Chebyshev series to z-series.
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| 
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							 | 
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| 
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								    Convert a Chebyshev series to the equivalent z-series. The result is
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| 
								 | 
							
								    never an empty array. The dtype of the return is the same as that of
							 | 
						||
| 
								 | 
							
								    the input. No checks are run on the arguments as this routine is for
							 | 
						||
| 
								 | 
							
								    internal use.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
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						||
| 
								 | 
							
								    c : 1-D ndarray
							 | 
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| 
								 | 
							
								        Chebyshev coefficients, ordered from low to high
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
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						||
| 
								 | 
							
								    zs : 1-D ndarray
							 | 
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| 
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								        Odd length symmetric z-series, ordered from  low to high.
							 | 
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| 
								 | 
							
								
							 | 
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| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    n = c.size
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| 
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								    zs = np.zeros(2*n-1, dtype=c.dtype)
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								    zs[n-1:] = c/2
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								    return zs + zs[::-1]
							 | 
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| 
								 | 
							
								
							 | 
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| 
								 | 
							
								
							 | 
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| 
								 | 
							
								def _zseries_to_cseries(zs):
							 | 
						||
| 
								 | 
							
								    """Convert z-series to a Chebyshev series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Convert a z series to the equivalent Chebyshev series. The result is
							 | 
						||
| 
								 | 
							
								    never an empty array. The dtype of the return is the same as that of
							 | 
						||
| 
								 | 
							
								    the input. No checks are run on the arguments as this routine is for
							 | 
						||
| 
								 | 
							
								    internal use.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    zs : 1-D ndarray
							 | 
						||
| 
								 | 
							
								        Odd length symmetric z-series, ordered from  low to high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    c : 1-D ndarray
							 | 
						||
| 
								 | 
							
								        Chebyshev coefficients, ordered from  low to high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    n = (zs.size + 1)//2
							 | 
						||
| 
								 | 
							
								    c = zs[n-1:].copy()
							 | 
						||
| 
								 | 
							
								    c[1:n] *= 2
							 | 
						||
| 
								 | 
							
								    return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def _zseries_mul(z1, z2):
							 | 
						||
| 
								 | 
							
								    """Multiply two z-series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Multiply two z-series to produce a z-series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    z1, z2 : 1-D ndarray
							 | 
						||
| 
								 | 
							
								        The arrays must be 1-D but this is not checked.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    product : 1-D ndarray
							 | 
						||
| 
								 | 
							
								        The product z-series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    This is simply convolution. If symmetric/anti-symmetric z-series are
							 | 
						||
| 
								 | 
							
								    denoted by S/A then the following rules apply:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    S*S, A*A -> S
							 | 
						||
| 
								 | 
							
								    S*A, A*S -> A
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return np.convolve(z1, z2)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def _zseries_div(z1, z2):
							 | 
						||
| 
								 | 
							
								    """Divide the first z-series by the second.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Divide `z1` by `z2` and return the quotient and remainder as z-series.
							 | 
						||
| 
								 | 
							
								    Warning: this implementation only applies when both z1 and z2 have the
							 | 
						||
| 
								 | 
							
								    same symmetry, which is sufficient for present purposes.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    z1, z2 : 1-D ndarray
							 | 
						||
| 
								 | 
							
								        The arrays must be 1-D and have the same symmetry, but this is not
							 | 
						||
| 
								 | 
							
								        checked.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    (quotient, remainder) : 1-D ndarrays
							 | 
						||
| 
								 | 
							
								        Quotient and remainder as z-series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    This is not the same as polynomial division on account of the desired form
							 | 
						||
| 
								 | 
							
								    of the remainder. If symmetric/anti-symmetric z-series are denoted by S/A
							 | 
						||
| 
								 | 
							
								    then the following rules apply:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    S/S -> S,S
							 | 
						||
| 
								 | 
							
								    A/A -> S,A
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The restriction to types of the same symmetry could be fixed but seems like
							 | 
						||
| 
								 | 
							
								    unneeded generality. There is no natural form for the remainder in the case
							 | 
						||
| 
								 | 
							
								    where there is no symmetry.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    z1 = z1.copy()
							 | 
						||
| 
								 | 
							
								    z2 = z2.copy()
							 | 
						||
| 
								 | 
							
								    lc1 = len(z1)
							 | 
						||
| 
								 | 
							
								    lc2 = len(z2)
							 | 
						||
| 
								 | 
							
								    if lc2 == 1:
							 | 
						||
| 
								 | 
							
								        z1 /= z2
							 | 
						||
| 
								 | 
							
								        return z1, z1[:1]*0
							 | 
						||
| 
								 | 
							
								    elif lc1 < lc2:
							 | 
						||
| 
								 | 
							
								        return z1[:1]*0, z1
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        dlen = lc1 - lc2
							 | 
						||
| 
								 | 
							
								        scl = z2[0]
							 | 
						||
| 
								 | 
							
								        z2 /= scl
							 | 
						||
| 
								 | 
							
								        quo = np.empty(dlen + 1, dtype=z1.dtype)
							 | 
						||
| 
								 | 
							
								        i = 0
							 | 
						||
| 
								 | 
							
								        j = dlen
							 | 
						||
| 
								 | 
							
								        while i < j:
							 | 
						||
| 
								 | 
							
								            r = z1[i]
							 | 
						||
| 
								 | 
							
								            quo[i] = z1[i]
							 | 
						||
| 
								 | 
							
								            quo[dlen - i] = r
							 | 
						||
| 
								 | 
							
								            tmp = r*z2
							 | 
						||
| 
								 | 
							
								            z1[i:i+lc2] -= tmp
							 | 
						||
| 
								 | 
							
								            z1[j:j+lc2] -= tmp
							 | 
						||
| 
								 | 
							
								            i += 1
							 | 
						||
| 
								 | 
							
								            j -= 1
							 | 
						||
| 
								 | 
							
								        r = z1[i]
							 | 
						||
| 
								 | 
							
								        quo[i] = r
							 | 
						||
| 
								 | 
							
								        tmp = r*z2
							 | 
						||
| 
								 | 
							
								        z1[i:i+lc2] -= tmp
							 | 
						||
| 
								 | 
							
								        quo /= scl
							 | 
						||
| 
								 | 
							
								        rem = z1[i+1:i-1+lc2].copy()
							 | 
						||
| 
								 | 
							
								        return quo, rem
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def _zseries_der(zs):
							 | 
						||
| 
								 | 
							
								    """Differentiate a z-series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The derivative is with respect to x, not z. This is achieved using the
							 | 
						||
| 
								 | 
							
								    chain rule and the value of dx/dz given in the module notes.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    zs : z-series
							 | 
						||
| 
								 | 
							
								        The z-series to differentiate.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    derivative : z-series
							 | 
						||
| 
								 | 
							
								        The derivative
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The zseries for x (ns) has been multiplied by two in order to avoid
							 | 
						||
| 
								 | 
							
								    using floats that are incompatible with Decimal and likely other
							 | 
						||
| 
								 | 
							
								    specialized scalar types. This scaling has been compensated by
							 | 
						||
| 
								 | 
							
								    multiplying the value of zs by two also so that the two cancels in the
							 | 
						||
| 
								 | 
							
								    division.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    n = len(zs)//2
							 | 
						||
| 
								 | 
							
								    ns = np.array([-1, 0, 1], dtype=zs.dtype)
							 | 
						||
| 
								 | 
							
								    zs *= np.arange(-n, n+1)*2
							 | 
						||
| 
								 | 
							
								    d, r = _zseries_div(zs, ns)
							 | 
						||
| 
								 | 
							
								    return d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def _zseries_int(zs):
							 | 
						||
| 
								 | 
							
								    """Integrate a z-series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The integral is with respect to x, not z. This is achieved by a change
							 | 
						||
| 
								 | 
							
								    of variable using dx/dz given in the module notes.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    zs : z-series
							 | 
						||
| 
								 | 
							
								        The z-series to integrate
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    integral : z-series
							 | 
						||
| 
								 | 
							
								        The indefinite integral
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The zseries for x (ns) has been multiplied by two in order to avoid
							 | 
						||
| 
								 | 
							
								    using floats that are incompatible with Decimal and likely other
							 | 
						||
| 
								 | 
							
								    specialized scalar types. This scaling has been compensated by
							 | 
						||
| 
								 | 
							
								    dividing the resulting zs by two.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    n = 1 + len(zs)//2
							 | 
						||
| 
								 | 
							
								    ns = np.array([-1, 0, 1], dtype=zs.dtype)
							 | 
						||
| 
								 | 
							
								    zs = _zseries_mul(zs, ns)
							 | 
						||
| 
								 | 
							
								    div = np.arange(-n, n+1)*2
							 | 
						||
| 
								 | 
							
								    zs[:n] /= div[:n]
							 | 
						||
| 
								 | 
							
								    zs[n+1:] /= div[n+1:]
							 | 
						||
| 
								 | 
							
								    zs[n] = 0
							 | 
						||
| 
								 | 
							
								    return zs
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								#
							 | 
						||
| 
								 | 
							
								# Chebyshev series functions
							 | 
						||
| 
								 | 
							
								#
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def poly2cheb(pol):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Convert a polynomial to a Chebyshev series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Convert an array representing the coefficients of a polynomial (relative
							 | 
						||
| 
								 | 
							
								    to the "standard" basis) ordered from lowest degree to highest, to an
							 | 
						||
| 
								 | 
							
								    array of the coefficients of the equivalent Chebyshev series, ordered
							 | 
						||
| 
								 | 
							
								    from lowest to highest degree.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    pol : array_like
							 | 
						||
| 
								 | 
							
								        1-D array containing the polynomial coefficients
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    c : ndarray
							 | 
						||
| 
								 | 
							
								        1-D array containing the coefficients of the equivalent Chebyshev
							 | 
						||
| 
								 | 
							
								        series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    cheb2poly
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The easy way to do conversions between polynomial basis sets
							 | 
						||
| 
								 | 
							
								    is to use the convert method of a class instance.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy import polynomial as P
							 | 
						||
| 
								 | 
							
								    >>> p = P.Polynomial(range(4))
							 | 
						||
| 
								 | 
							
								    >>> p
							 | 
						||
| 
								 | 
							
								    Polynomial([0., 1., 2., 3.], domain=[-1,  1], window=[-1,  1])
							 | 
						||
| 
								 | 
							
								    >>> c = p.convert(kind=P.Chebyshev)
							 | 
						||
| 
								 | 
							
								    >>> c
							 | 
						||
| 
								 | 
							
								    Chebyshev([1.  , 3.25, 1.  , 0.75], domain=[-1.,  1.], window=[-1.,  1.])
							 | 
						||
| 
								 | 
							
								    >>> P.chebyshev.poly2cheb(range(4))
							 | 
						||
| 
								 | 
							
								    array([1.  , 3.25, 1.  , 0.75])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    [pol] = pu.as_series([pol])
							 | 
						||
| 
								 | 
							
								    deg = len(pol) - 1
							 | 
						||
| 
								 | 
							
								    res = 0
							 | 
						||
| 
								 | 
							
								    for i in range(deg, -1, -1):
							 | 
						||
| 
								 | 
							
								        res = chebadd(chebmulx(res), pol[i])
							 | 
						||
| 
								 | 
							
								    return res
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def cheb2poly(c):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Convert a Chebyshev series to a polynomial.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Convert an array representing the coefficients of a Chebyshev series,
							 | 
						||
| 
								 | 
							
								    ordered from lowest degree to highest, to an array of the coefficients
							 | 
						||
| 
								 | 
							
								    of the equivalent polynomial (relative to the "standard" basis) ordered
							 | 
						||
| 
								 | 
							
								    from lowest to highest degree.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        1-D array containing the Chebyshev series coefficients, ordered
							 | 
						||
| 
								 | 
							
								        from lowest order term to highest.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    pol : ndarray
							 | 
						||
| 
								 | 
							
								        1-D array containing the coefficients of the equivalent polynomial
							 | 
						||
| 
								 | 
							
								        (relative to the "standard" basis) ordered from lowest order term
							 | 
						||
| 
								 | 
							
								        to highest.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    poly2cheb
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The easy way to do conversions between polynomial basis sets
							 | 
						||
| 
								 | 
							
								    is to use the convert method of a class instance.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy import polynomial as P
							 | 
						||
| 
								 | 
							
								    >>> c = P.Chebyshev(range(4))
							 | 
						||
| 
								 | 
							
								    >>> c
							 | 
						||
| 
								 | 
							
								    Chebyshev([0., 1., 2., 3.], domain=[-1,  1], window=[-1,  1])
							 | 
						||
| 
								 | 
							
								    >>> p = c.convert(kind=P.Polynomial)
							 | 
						||
| 
								 | 
							
								    >>> p
							 | 
						||
| 
								 | 
							
								    Polynomial([-2., -8.,  4., 12.], domain=[-1.,  1.], window=[-1.,  1.])
							 | 
						||
| 
								 | 
							
								    >>> P.chebyshev.cheb2poly(range(4))
							 | 
						||
| 
								 | 
							
								    array([-2.,  -8.,   4.,  12.])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    from .polynomial import polyadd, polysub, polymulx
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    [c] = pu.as_series([c])
							 | 
						||
| 
								 | 
							
								    n = len(c)
							 | 
						||
| 
								 | 
							
								    if n < 3:
							 | 
						||
| 
								 | 
							
								        return c
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        c0 = c[-2]
							 | 
						||
| 
								 | 
							
								        c1 = c[-1]
							 | 
						||
| 
								 | 
							
								        # i is the current degree of c1
							 | 
						||
| 
								 | 
							
								        for i in range(n - 1, 1, -1):
							 | 
						||
| 
								 | 
							
								            tmp = c0
							 | 
						||
| 
								 | 
							
								            c0 = polysub(c[i - 2], c1)
							 | 
						||
| 
								 | 
							
								            c1 = polyadd(tmp, polymulx(c1)*2)
							 | 
						||
| 
								 | 
							
								        return polyadd(c0, polymulx(c1))
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								#
							 | 
						||
| 
								 | 
							
								# These are constant arrays are of integer type so as to be compatible
							 | 
						||
| 
								 | 
							
								# with the widest range of other types, such as Decimal.
							 | 
						||
| 
								 | 
							
								#
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								# Chebyshev default domain.
							 | 
						||
| 
								 | 
							
								chebdomain = np.array([-1, 1])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								# Chebyshev coefficients representing zero.
							 | 
						||
| 
								 | 
							
								chebzero = np.array([0])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								# Chebyshev coefficients representing one.
							 | 
						||
| 
								 | 
							
								chebone = np.array([1])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								# Chebyshev coefficients representing the identity x.
							 | 
						||
| 
								 | 
							
								chebx = np.array([0, 1])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebline(off, scl):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Chebyshev series whose graph is a straight line.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    off, scl : scalars
							 | 
						||
| 
								 | 
							
								        The specified line is given by ``off + scl*x``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    y : ndarray
							 | 
						||
| 
								 | 
							
								        This module's representation of the Chebyshev series for
							 | 
						||
| 
								 | 
							
								        ``off + scl*x``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.polynomial.polyline
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.legendre.legline
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.laguerre.lagline
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite.hermline
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite_e.hermeline
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> import numpy.polynomial.chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> C.chebline(3,2)
							 | 
						||
| 
								 | 
							
								    array([3, 2])
							 | 
						||
| 
								 | 
							
								    >>> C.chebval(-3, C.chebline(3,2)) # should be -3
							 | 
						||
| 
								 | 
							
								    -3.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    if scl != 0:
							 | 
						||
| 
								 | 
							
								        return np.array([off, scl])
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        return np.array([off])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebfromroots(roots):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Generate a Chebyshev series with given roots.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The function returns the coefficients of the polynomial
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(x) = (x - r_0) * (x - r_1) * ... * (x - r_n),
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    in Chebyshev form, where the `r_n` are the roots specified in `roots`.
							 | 
						||
| 
								 | 
							
								    If a zero has multiplicity n, then it must appear in `roots` n times.
							 | 
						||
| 
								 | 
							
								    For instance, if 2 is a root of multiplicity three and 3 is a root of
							 | 
						||
| 
								 | 
							
								    multiplicity 2, then `roots` looks something like [2, 2, 2, 3, 3]. The
							 | 
						||
| 
								 | 
							
								    roots can appear in any order.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If the returned coefficients are `c`, then
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(x) = c_0 + c_1 * T_1(x) + ... +  c_n * T_n(x)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The coefficient of the last term is not generally 1 for monic
							 | 
						||
| 
								 | 
							
								    polynomials in Chebyshev form.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    roots : array_like
							 | 
						||
| 
								 | 
							
								        Sequence containing the roots.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    out : ndarray
							 | 
						||
| 
								 | 
							
								        1-D array of coefficients.  If all roots are real then `out` is a
							 | 
						||
| 
								 | 
							
								        real array, if some of the roots are complex, then `out` is complex
							 | 
						||
| 
								 | 
							
								        even if all the coefficients in the result are real (see Examples
							 | 
						||
| 
								 | 
							
								        below).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.polynomial.polyfromroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.legendre.legfromroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.laguerre.lagfromroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite.hermfromroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite_e.hermefromroots
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> import numpy.polynomial.chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> C.chebfromroots((-1,0,1)) # x^3 - x relative to the standard basis
							 | 
						||
| 
								 | 
							
								    array([ 0.  , -0.25,  0.  ,  0.25])
							 | 
						||
| 
								 | 
							
								    >>> j = complex(0,1)
							 | 
						||
| 
								 | 
							
								    >>> C.chebfromroots((-j,j)) # x^2 + 1 relative to the standard basis
							 | 
						||
| 
								 | 
							
								    array([1.5+0.j, 0. +0.j, 0.5+0.j])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._fromroots(chebline, chebmul, roots)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebadd(c1, c2):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Add one Chebyshev series to another.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the sum of two Chebyshev series `c1` + `c2`.  The arguments
							 | 
						||
| 
								 | 
							
								    are sequences of coefficients ordered from lowest order term to
							 | 
						||
| 
								 | 
							
								    highest, i.e., [1,2,3] represents the series ``T_0 + 2*T_1 + 3*T_2``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c1, c2 : array_like
							 | 
						||
| 
								 | 
							
								        1-D arrays of Chebyshev series coefficients ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    out : ndarray
							 | 
						||
| 
								 | 
							
								        Array representing the Chebyshev series of their sum.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebsub, chebmulx, chebmul, chebdiv, chebpow
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    Unlike multiplication, division, etc., the sum of two Chebyshev series
							 | 
						||
| 
								 | 
							
								    is a Chebyshev series (without having to "reproject" the result onto
							 | 
						||
| 
								 | 
							
								    the basis set) so addition, just like that of "standard" polynomials,
							 | 
						||
| 
								 | 
							
								    is simply "component-wise."
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> c1 = (1,2,3)
							 | 
						||
| 
								 | 
							
								    >>> c2 = (3,2,1)
							 | 
						||
| 
								 | 
							
								    >>> C.chebadd(c1,c2)
							 | 
						||
| 
								 | 
							
								    array([4., 4., 4.])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._add(c1, c2)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebsub(c1, c2):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Subtract one Chebyshev series from another.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the difference of two Chebyshev series `c1` - `c2`.  The
							 | 
						||
| 
								 | 
							
								    sequences of coefficients are from lowest order term to highest, i.e.,
							 | 
						||
| 
								 | 
							
								    [1,2,3] represents the series ``T_0 + 2*T_1 + 3*T_2``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c1, c2 : array_like
							 | 
						||
| 
								 | 
							
								        1-D arrays of Chebyshev series coefficients ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    out : ndarray
							 | 
						||
| 
								 | 
							
								        Of Chebyshev series coefficients representing their difference.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebadd, chebmulx, chebmul, chebdiv, chebpow
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    Unlike multiplication, division, etc., the difference of two Chebyshev
							 | 
						||
| 
								 | 
							
								    series is a Chebyshev series (without having to "reproject" the result
							 | 
						||
| 
								 | 
							
								    onto the basis set) so subtraction, just like that of "standard"
							 | 
						||
| 
								 | 
							
								    polynomials, is simply "component-wise."
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> c1 = (1,2,3)
							 | 
						||
| 
								 | 
							
								    >>> c2 = (3,2,1)
							 | 
						||
| 
								 | 
							
								    >>> C.chebsub(c1,c2)
							 | 
						||
| 
								 | 
							
								    array([-2.,  0.,  2.])
							 | 
						||
| 
								 | 
							
								    >>> C.chebsub(c2,c1) # -C.chebsub(c1,c2)
							 | 
						||
| 
								 | 
							
								    array([ 2.,  0., -2.])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._sub(c1, c2)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebmulx(c):
							 | 
						||
| 
								 | 
							
								    """Multiply a Chebyshev series by x.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Multiply the polynomial `c` by x, where x is the independent
							 | 
						||
| 
								 | 
							
								    variable.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        1-D array of Chebyshev series coefficients ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    out : ndarray
							 | 
						||
| 
								 | 
							
								        Array representing the result of the multiplication.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.5.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> C.chebmulx([1,2,3])
							 | 
						||
| 
								 | 
							
								    array([1. , 2.5, 1. , 1.5])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # c is a trimmed copy
							 | 
						||
| 
								 | 
							
								    [c] = pu.as_series([c])
							 | 
						||
| 
								 | 
							
								    # The zero series needs special treatment
							 | 
						||
| 
								 | 
							
								    if len(c) == 1 and c[0] == 0:
							 | 
						||
| 
								 | 
							
								        return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    prd = np.empty(len(c) + 1, dtype=c.dtype)
							 | 
						||
| 
								 | 
							
								    prd[0] = c[0]*0
							 | 
						||
| 
								 | 
							
								    prd[1] = c[0]
							 | 
						||
| 
								 | 
							
								    if len(c) > 1:
							 | 
						||
| 
								 | 
							
								        tmp = c[1:]/2
							 | 
						||
| 
								 | 
							
								        prd[2:] = tmp
							 | 
						||
| 
								 | 
							
								        prd[0:-2] += tmp
							 | 
						||
| 
								 | 
							
								    return prd
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebmul(c1, c2):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Multiply one Chebyshev series by another.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the product of two Chebyshev series `c1` * `c2`.  The arguments
							 | 
						||
| 
								 | 
							
								    are sequences of coefficients, from lowest order "term" to highest,
							 | 
						||
| 
								 | 
							
								    e.g., [1,2,3] represents the series ``T_0 + 2*T_1 + 3*T_2``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c1, c2 : array_like
							 | 
						||
| 
								 | 
							
								        1-D arrays of Chebyshev series coefficients ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    out : ndarray
							 | 
						||
| 
								 | 
							
								        Of Chebyshev series coefficients representing their product.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebadd, chebsub, chebmulx, chebdiv, chebpow
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    In general, the (polynomial) product of two C-series results in terms
							 | 
						||
| 
								 | 
							
								    that are not in the Chebyshev polynomial basis set.  Thus, to express
							 | 
						||
| 
								 | 
							
								    the product as a C-series, it is typically necessary to "reproject"
							 | 
						||
| 
								 | 
							
								    the product onto said basis set, which typically produces
							 | 
						||
| 
								 | 
							
								    "unintuitive live" (but correct) results; see Examples section below.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> c1 = (1,2,3)
							 | 
						||
| 
								 | 
							
								    >>> c2 = (3,2,1)
							 | 
						||
| 
								 | 
							
								    >>> C.chebmul(c1,c2) # multiplication requires "reprojection"
							 | 
						||
| 
								 | 
							
								    array([  6.5,  12. ,  12. ,   4. ,   1.5])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # c1, c2 are trimmed copies
							 | 
						||
| 
								 | 
							
								    [c1, c2] = pu.as_series([c1, c2])
							 | 
						||
| 
								 | 
							
								    z1 = _cseries_to_zseries(c1)
							 | 
						||
| 
								 | 
							
								    z2 = _cseries_to_zseries(c2)
							 | 
						||
| 
								 | 
							
								    prd = _zseries_mul(z1, z2)
							 | 
						||
| 
								 | 
							
								    ret = _zseries_to_cseries(prd)
							 | 
						||
| 
								 | 
							
								    return pu.trimseq(ret)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebdiv(c1, c2):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Divide one Chebyshev series by another.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the quotient-with-remainder of two Chebyshev series
							 | 
						||
| 
								 | 
							
								    `c1` / `c2`.  The arguments are sequences of coefficients from lowest
							 | 
						||
| 
								 | 
							
								    order "term" to highest, e.g., [1,2,3] represents the series
							 | 
						||
| 
								 | 
							
								    ``T_0 + 2*T_1 + 3*T_2``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c1, c2 : array_like
							 | 
						||
| 
								 | 
							
								        1-D arrays of Chebyshev series coefficients ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    [quo, rem] : ndarrays
							 | 
						||
| 
								 | 
							
								        Of Chebyshev series coefficients representing the quotient and
							 | 
						||
| 
								 | 
							
								        remainder.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebadd, chebsub, chebmulx, chebmul, chebpow
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    In general, the (polynomial) division of one C-series by another
							 | 
						||
| 
								 | 
							
								    results in quotient and remainder terms that are not in the Chebyshev
							 | 
						||
| 
								 | 
							
								    polynomial basis set.  Thus, to express these results as C-series, it
							 | 
						||
| 
								 | 
							
								    is typically necessary to "reproject" the results onto said basis
							 | 
						||
| 
								 | 
							
								    set, which typically produces "unintuitive" (but correct) results;
							 | 
						||
| 
								 | 
							
								    see Examples section below.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> c1 = (1,2,3)
							 | 
						||
| 
								 | 
							
								    >>> c2 = (3,2,1)
							 | 
						||
| 
								 | 
							
								    >>> C.chebdiv(c1,c2) # quotient "intuitive," remainder not
							 | 
						||
| 
								 | 
							
								    (array([3.]), array([-8., -4.]))
							 | 
						||
| 
								 | 
							
								    >>> c2 = (0,1,2,3)
							 | 
						||
| 
								 | 
							
								    >>> C.chebdiv(c2,c1) # neither "intuitive"
							 | 
						||
| 
								 | 
							
								    (array([0., 2.]), array([-2., -4.]))
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # c1, c2 are trimmed copies
							 | 
						||
| 
								 | 
							
								    [c1, c2] = pu.as_series([c1, c2])
							 | 
						||
| 
								 | 
							
								    if c2[-1] == 0:
							 | 
						||
| 
								 | 
							
								        raise ZeroDivisionError()
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    # note: this is more efficient than `pu._div(chebmul, c1, c2)`
							 | 
						||
| 
								 | 
							
								    lc1 = len(c1)
							 | 
						||
| 
								 | 
							
								    lc2 = len(c2)
							 | 
						||
| 
								 | 
							
								    if lc1 < lc2:
							 | 
						||
| 
								 | 
							
								        return c1[:1]*0, c1
							 | 
						||
| 
								 | 
							
								    elif lc2 == 1:
							 | 
						||
| 
								 | 
							
								        return c1/c2[-1], c1[:1]*0
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        z1 = _cseries_to_zseries(c1)
							 | 
						||
| 
								 | 
							
								        z2 = _cseries_to_zseries(c2)
							 | 
						||
| 
								 | 
							
								        quo, rem = _zseries_div(z1, z2)
							 | 
						||
| 
								 | 
							
								        quo = pu.trimseq(_zseries_to_cseries(quo))
							 | 
						||
| 
								 | 
							
								        rem = pu.trimseq(_zseries_to_cseries(rem))
							 | 
						||
| 
								 | 
							
								        return quo, rem
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebpow(c, pow, maxpower=16):
							 | 
						||
| 
								 | 
							
								    """Raise a Chebyshev series to a power.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the Chebyshev series `c` raised to the power `pow`. The
							 | 
						||
| 
								 | 
							
								    argument `c` is a sequence of coefficients ordered from low to high.
							 | 
						||
| 
								 | 
							
								    i.e., [1,2,3] is the series  ``T_0 + 2*T_1 + 3*T_2.``
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        1-D array of Chebyshev series coefficients ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								    pow : integer
							 | 
						||
| 
								 | 
							
								        Power to which the series will be raised
							 | 
						||
| 
								 | 
							
								    maxpower : integer, optional
							 | 
						||
| 
								 | 
							
								        Maximum power allowed. This is mainly to limit growth of the series
							 | 
						||
| 
								 | 
							
								        to unmanageable size. Default is 16
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    coef : ndarray
							 | 
						||
| 
								 | 
							
								        Chebyshev series of power.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebadd, chebsub, chebmulx, chebmul, chebdiv
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> C.chebpow([1, 2, 3, 4], 2)
							 | 
						||
| 
								 | 
							
								    array([15.5, 22. , 16. , ..., 12.5, 12. ,  8. ])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # note: this is more efficient than `pu._pow(chebmul, c1, c2)`, as it
							 | 
						||
| 
								 | 
							
								    # avoids converting between z and c series repeatedly
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    # c is a trimmed copy
							 | 
						||
| 
								 | 
							
								    [c] = pu.as_series([c])
							 | 
						||
| 
								 | 
							
								    power = int(pow)
							 | 
						||
| 
								 | 
							
								    if power != pow or power < 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("Power must be a non-negative integer.")
							 | 
						||
| 
								 | 
							
								    elif maxpower is not None and power > maxpower:
							 | 
						||
| 
								 | 
							
								        raise ValueError("Power is too large")
							 | 
						||
| 
								 | 
							
								    elif power == 0:
							 | 
						||
| 
								 | 
							
								        return np.array([1], dtype=c.dtype)
							 | 
						||
| 
								 | 
							
								    elif power == 1:
							 | 
						||
| 
								 | 
							
								        return c
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        # This can be made more efficient by using powers of two
							 | 
						||
| 
								 | 
							
								        # in the usual way.
							 | 
						||
| 
								 | 
							
								        zs = _cseries_to_zseries(c)
							 | 
						||
| 
								 | 
							
								        prd = zs
							 | 
						||
| 
								 | 
							
								        for i in range(2, power + 1):
							 | 
						||
| 
								 | 
							
								            prd = np.convolve(prd, zs)
							 | 
						||
| 
								 | 
							
								        return _zseries_to_cseries(prd)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebder(c, m=1, scl=1, axis=0):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Differentiate a Chebyshev series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the Chebyshev series coefficients `c` differentiated `m` times
							 | 
						||
| 
								 | 
							
								    along `axis`.  At each iteration the result is multiplied by `scl` (the
							 | 
						||
| 
								 | 
							
								    scaling factor is for use in a linear change of variable). The argument
							 | 
						||
| 
								 | 
							
								    `c` is an array of coefficients from low to high degree along each
							 | 
						||
| 
								 | 
							
								    axis, e.g., [1,2,3] represents the series ``1*T_0 + 2*T_1 + 3*T_2``
							 | 
						||
| 
								 | 
							
								    while [[1,2],[1,2]] represents ``1*T_0(x)*T_0(y) + 1*T_1(x)*T_0(y) +
							 | 
						||
| 
								 | 
							
								    2*T_0(x)*T_1(y) + 2*T_1(x)*T_1(y)`` if axis=0 is ``x`` and axis=1 is
							 | 
						||
| 
								 | 
							
								    ``y``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of Chebyshev series coefficients. If c is multidimensional
							 | 
						||
| 
								 | 
							
								        the different axis correspond to different variables with the
							 | 
						||
| 
								 | 
							
								        degree in each axis given by the corresponding index.
							 | 
						||
| 
								 | 
							
								    m : int, optional
							 | 
						||
| 
								 | 
							
								        Number of derivatives taken, must be non-negative. (Default: 1)
							 | 
						||
| 
								 | 
							
								    scl : scalar, optional
							 | 
						||
| 
								 | 
							
								        Each differentiation is multiplied by `scl`.  The end result is
							 | 
						||
| 
								 | 
							
								        multiplication by ``scl**m``.  This is for use in a linear change of
							 | 
						||
| 
								 | 
							
								        variable. (Default: 1)
							 | 
						||
| 
								 | 
							
								    axis : int, optional
							 | 
						||
| 
								 | 
							
								        Axis over which the derivative is taken. (Default: 0).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    der : ndarray
							 | 
						||
| 
								 | 
							
								        Chebyshev series of the derivative.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebint
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    In general, the result of differentiating a C-series needs to be
							 | 
						||
| 
								 | 
							
								    "reprojected" onto the C-series basis set. Thus, typically, the
							 | 
						||
| 
								 | 
							
								    result of this function is "unintuitive," albeit correct; see Examples
							 | 
						||
| 
								 | 
							
								    section below.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> c = (1,2,3,4)
							 | 
						||
| 
								 | 
							
								    >>> C.chebder(c)
							 | 
						||
| 
								 | 
							
								    array([14., 12., 24.])
							 | 
						||
| 
								 | 
							
								    >>> C.chebder(c,3)
							 | 
						||
| 
								 | 
							
								    array([96.])
							 | 
						||
| 
								 | 
							
								    >>> C.chebder(c,scl=-1)
							 | 
						||
| 
								 | 
							
								    array([-14., -12., -24.])
							 | 
						||
| 
								 | 
							
								    >>> C.chebder(c,2,-1)
							 | 
						||
| 
								 | 
							
								    array([12.,  96.])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    c = np.array(c, ndmin=1, copy=True)
							 | 
						||
| 
								 | 
							
								    if c.dtype.char in '?bBhHiIlLqQpP':
							 | 
						||
| 
								 | 
							
								        c = c.astype(np.double)
							 | 
						||
| 
								 | 
							
								    cnt = pu._deprecate_as_int(m, "the order of derivation")
							 | 
						||
| 
								 | 
							
								    iaxis = pu._deprecate_as_int(axis, "the axis")
							 | 
						||
| 
								 | 
							
								    if cnt < 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("The order of derivation must be non-negative")
							 | 
						||
| 
								 | 
							
								    iaxis = normalize_axis_index(iaxis, c.ndim)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    if cnt == 0:
							 | 
						||
| 
								 | 
							
								        return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    c = np.moveaxis(c, iaxis, 0)
							 | 
						||
| 
								 | 
							
								    n = len(c)
							 | 
						||
| 
								 | 
							
								    if cnt >= n:
							 | 
						||
| 
								 | 
							
								        c = c[:1]*0
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        for i in range(cnt):
							 | 
						||
| 
								 | 
							
								            n = n - 1
							 | 
						||
| 
								 | 
							
								            c *= scl
							 | 
						||
| 
								 | 
							
								            der = np.empty((n,) + c.shape[1:], dtype=c.dtype)
							 | 
						||
| 
								 | 
							
								            for j in range(n, 2, -1):
							 | 
						||
| 
								 | 
							
								                der[j - 1] = (2*j)*c[j]
							 | 
						||
| 
								 | 
							
								                c[j - 2] += (j*c[j])/(j - 2)
							 | 
						||
| 
								 | 
							
								            if n > 1:
							 | 
						||
| 
								 | 
							
								                der[1] = 4*c[2]
							 | 
						||
| 
								 | 
							
								            der[0] = c[1]
							 | 
						||
| 
								 | 
							
								            c = der
							 | 
						||
| 
								 | 
							
								    c = np.moveaxis(c, 0, iaxis)
							 | 
						||
| 
								 | 
							
								    return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebint(c, m=1, k=[], lbnd=0, scl=1, axis=0):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Integrate a Chebyshev series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the Chebyshev series coefficients `c` integrated `m` times from
							 | 
						||
| 
								 | 
							
								    `lbnd` along `axis`. At each iteration the resulting series is
							 | 
						||
| 
								 | 
							
								    **multiplied** by `scl` and an integration constant, `k`, is added.
							 | 
						||
| 
								 | 
							
								    The scaling factor is for use in a linear change of variable.  ("Buyer
							 | 
						||
| 
								 | 
							
								    beware": note that, depending on what one is doing, one may want `scl`
							 | 
						||
| 
								 | 
							
								    to be the reciprocal of what one might expect; for more information,
							 | 
						||
| 
								 | 
							
								    see the Notes section below.)  The argument `c` is an array of
							 | 
						||
| 
								 | 
							
								    coefficients from low to high degree along each axis, e.g., [1,2,3]
							 | 
						||
| 
								 | 
							
								    represents the series ``T_0 + 2*T_1 + 3*T_2`` while [[1,2],[1,2]]
							 | 
						||
| 
								 | 
							
								    represents ``1*T_0(x)*T_0(y) + 1*T_1(x)*T_0(y) + 2*T_0(x)*T_1(y) +
							 | 
						||
| 
								 | 
							
								    2*T_1(x)*T_1(y)`` if axis=0 is ``x`` and axis=1 is ``y``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of Chebyshev series coefficients. If c is multidimensional
							 | 
						||
| 
								 | 
							
								        the different axis correspond to different variables with the
							 | 
						||
| 
								 | 
							
								        degree in each axis given by the corresponding index.
							 | 
						||
| 
								 | 
							
								    m : int, optional
							 | 
						||
| 
								 | 
							
								        Order of integration, must be positive. (Default: 1)
							 | 
						||
| 
								 | 
							
								    k : {[], list, scalar}, optional
							 | 
						||
| 
								 | 
							
								        Integration constant(s).  The value of the first integral at zero
							 | 
						||
| 
								 | 
							
								        is the first value in the list, the value of the second integral
							 | 
						||
| 
								 | 
							
								        at zero is the second value, etc.  If ``k == []`` (the default),
							 | 
						||
| 
								 | 
							
								        all constants are set to zero.  If ``m == 1``, a single scalar can
							 | 
						||
| 
								 | 
							
								        be given instead of a list.
							 | 
						||
| 
								 | 
							
								    lbnd : scalar, optional
							 | 
						||
| 
								 | 
							
								        The lower bound of the integral. (Default: 0)
							 | 
						||
| 
								 | 
							
								    scl : scalar, optional
							 | 
						||
| 
								 | 
							
								        Following each integration the result is *multiplied* by `scl`
							 | 
						||
| 
								 | 
							
								        before the integration constant is added. (Default: 1)
							 | 
						||
| 
								 | 
							
								    axis : int, optional
							 | 
						||
| 
								 | 
							
								        Axis over which the integral is taken. (Default: 0).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    S : ndarray
							 | 
						||
| 
								 | 
							
								        C-series coefficients of the integral.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Raises
							 | 
						||
| 
								 | 
							
								    ------
							 | 
						||
| 
								 | 
							
								    ValueError
							 | 
						||
| 
								 | 
							
								        If ``m < 1``, ``len(k) > m``, ``np.ndim(lbnd) != 0``, or
							 | 
						||
| 
								 | 
							
								        ``np.ndim(scl) != 0``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebder
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    Note that the result of each integration is *multiplied* by `scl`.
							 | 
						||
| 
								 | 
							
								    Why is this important to note?  Say one is making a linear change of
							 | 
						||
| 
								 | 
							
								    variable :math:`u = ax + b` in an integral relative to `x`.  Then
							 | 
						||
| 
								 | 
							
								    :math:`dx = du/a`, so one will need to set `scl` equal to
							 | 
						||
| 
								 | 
							
								    :math:`1/a`- perhaps not what one would have first thought.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Also note that, in general, the result of integrating a C-series needs
							 | 
						||
| 
								 | 
							
								    to be "reprojected" onto the C-series basis set.  Thus, typically,
							 | 
						||
| 
								 | 
							
								    the result of this function is "unintuitive," albeit correct; see
							 | 
						||
| 
								 | 
							
								    Examples section below.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> from numpy.polynomial import chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> c = (1,2,3)
							 | 
						||
| 
								 | 
							
								    >>> C.chebint(c)
							 | 
						||
| 
								 | 
							
								    array([ 0.5, -0.5,  0.5,  0.5])
							 | 
						||
| 
								 | 
							
								    >>> C.chebint(c,3)
							 | 
						||
| 
								 | 
							
								    array([ 0.03125   , -0.1875    ,  0.04166667, -0.05208333,  0.01041667, # may vary
							 | 
						||
| 
								 | 
							
								        0.00625   ])
							 | 
						||
| 
								 | 
							
								    >>> C.chebint(c, k=3)
							 | 
						||
| 
								 | 
							
								    array([ 3.5, -0.5,  0.5,  0.5])
							 | 
						||
| 
								 | 
							
								    >>> C.chebint(c,lbnd=-2)
							 | 
						||
| 
								 | 
							
								    array([ 8.5, -0.5,  0.5,  0.5])
							 | 
						||
| 
								 | 
							
								    >>> C.chebint(c,scl=-2)
							 | 
						||
| 
								 | 
							
								    array([-1.,  1., -1., -1.])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    c = np.array(c, ndmin=1, copy=True)
							 | 
						||
| 
								 | 
							
								    if c.dtype.char in '?bBhHiIlLqQpP':
							 | 
						||
| 
								 | 
							
								        c = c.astype(np.double)
							 | 
						||
| 
								 | 
							
								    if not np.iterable(k):
							 | 
						||
| 
								 | 
							
								        k = [k]
							 | 
						||
| 
								 | 
							
								    cnt = pu._deprecate_as_int(m, "the order of integration")
							 | 
						||
| 
								 | 
							
								    iaxis = pu._deprecate_as_int(axis, "the axis")
							 | 
						||
| 
								 | 
							
								    if cnt < 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("The order of integration must be non-negative")
							 | 
						||
| 
								 | 
							
								    if len(k) > cnt:
							 | 
						||
| 
								 | 
							
								        raise ValueError("Too many integration constants")
							 | 
						||
| 
								 | 
							
								    if np.ndim(lbnd) != 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("lbnd must be a scalar.")
							 | 
						||
| 
								 | 
							
								    if np.ndim(scl) != 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("scl must be a scalar.")
							 | 
						||
| 
								 | 
							
								    iaxis = normalize_axis_index(iaxis, c.ndim)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    if cnt == 0:
							 | 
						||
| 
								 | 
							
								        return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    c = np.moveaxis(c, iaxis, 0)
							 | 
						||
| 
								 | 
							
								    k = list(k) + [0]*(cnt - len(k))
							 | 
						||
| 
								 | 
							
								    for i in range(cnt):
							 | 
						||
| 
								 | 
							
								        n = len(c)
							 | 
						||
| 
								 | 
							
								        c *= scl
							 | 
						||
| 
								 | 
							
								        if n == 1 and np.all(c[0] == 0):
							 | 
						||
| 
								 | 
							
								            c[0] += k[i]
							 | 
						||
| 
								 | 
							
								        else:
							 | 
						||
| 
								 | 
							
								            tmp = np.empty((n + 1,) + c.shape[1:], dtype=c.dtype)
							 | 
						||
| 
								 | 
							
								            tmp[0] = c[0]*0
							 | 
						||
| 
								 | 
							
								            tmp[1] = c[0]
							 | 
						||
| 
								 | 
							
								            if n > 1:
							 | 
						||
| 
								 | 
							
								                tmp[2] = c[1]/4
							 | 
						||
| 
								 | 
							
								            for j in range(2, n):
							 | 
						||
| 
								 | 
							
								                tmp[j + 1] = c[j]/(2*(j + 1))
							 | 
						||
| 
								 | 
							
								                tmp[j - 1] -= c[j]/(2*(j - 1))
							 | 
						||
| 
								 | 
							
								            tmp[0] += k[i] - chebval(lbnd, tmp)
							 | 
						||
| 
								 | 
							
								            c = tmp
							 | 
						||
| 
								 | 
							
								    c = np.moveaxis(c, 0, iaxis)
							 | 
						||
| 
								 | 
							
								    return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebval(x, c, tensor=True):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Evaluate a Chebyshev series at points x.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` is of length `n + 1`, this function returns the value:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(x) = c_0 * T_0(x) + c_1 * T_1(x) + ... + c_n * T_n(x)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The parameter `x` is converted to an array only if it is a tuple or a
							 | 
						||
| 
								 | 
							
								    list, otherwise it is treated as a scalar. In either case, either `x`
							 | 
						||
| 
								 | 
							
								    or its elements must support multiplication and addition both with
							 | 
						||
| 
								 | 
							
								    themselves and with the elements of `c`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` is a 1-D array, then `p(x)` will have the same shape as `x`.  If
							 | 
						||
| 
								 | 
							
								    `c` is multidimensional, then the shape of the result depends on the
							 | 
						||
| 
								 | 
							
								    value of `tensor`. If `tensor` is true the shape will be c.shape[1:] +
							 | 
						||
| 
								 | 
							
								    x.shape. If `tensor` is false the shape will be c.shape[1:]. Note that
							 | 
						||
| 
								 | 
							
								    scalars have shape (,).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Trailing zeros in the coefficients will be used in the evaluation, so
							 | 
						||
| 
								 | 
							
								    they should be avoided if efficiency is a concern.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x : array_like, compatible object
							 | 
						||
| 
								 | 
							
								        If `x` is a list or tuple, it is converted to an ndarray, otherwise
							 | 
						||
| 
								 | 
							
								        it is left unchanged and treated as a scalar. In either case, `x`
							 | 
						||
| 
								 | 
							
								        or its elements must support addition and multiplication with
							 | 
						||
| 
								 | 
							
								        themselves and with the elements of `c`.
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of coefficients ordered so that the coefficients for terms of
							 | 
						||
| 
								 | 
							
								        degree n are contained in c[n]. If `c` is multidimensional the
							 | 
						||
| 
								 | 
							
								        remaining indices enumerate multiple polynomials. In the two
							 | 
						||
| 
								 | 
							
								        dimensional case the coefficients may be thought of as stored in
							 | 
						||
| 
								 | 
							
								        the columns of `c`.
							 | 
						||
| 
								 | 
							
								    tensor : boolean, optional
							 | 
						||
| 
								 | 
							
								        If True, the shape of the coefficient array is extended with ones
							 | 
						||
| 
								 | 
							
								        on the right, one for each dimension of `x`. Scalars have dimension 0
							 | 
						||
| 
								 | 
							
								        for this action. The result is that every column of coefficients in
							 | 
						||
| 
								 | 
							
								        `c` is evaluated for every element of `x`. If False, `x` is broadcast
							 | 
						||
| 
								 | 
							
								        over the columns of `c` for the evaluation.  This keyword is useful
							 | 
						||
| 
								 | 
							
								        when `c` is multidimensional. The default value is True.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    values : ndarray, algebra_like
							 | 
						||
| 
								 | 
							
								        The shape of the return value is described above.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebval2d, chebgrid2d, chebval3d, chebgrid3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The evaluation uses Clenshaw recursion, aka synthetic division.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    c = np.array(c, ndmin=1, copy=True)
							 | 
						||
| 
								 | 
							
								    if c.dtype.char in '?bBhHiIlLqQpP':
							 | 
						||
| 
								 | 
							
								        c = c.astype(np.double)
							 | 
						||
| 
								 | 
							
								    if isinstance(x, (tuple, list)):
							 | 
						||
| 
								 | 
							
								        x = np.asarray(x)
							 | 
						||
| 
								 | 
							
								    if isinstance(x, np.ndarray) and tensor:
							 | 
						||
| 
								 | 
							
								        c = c.reshape(c.shape + (1,)*x.ndim)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    if len(c) == 1:
							 | 
						||
| 
								 | 
							
								        c0 = c[0]
							 | 
						||
| 
								 | 
							
								        c1 = 0
							 | 
						||
| 
								 | 
							
								    elif len(c) == 2:
							 | 
						||
| 
								 | 
							
								        c0 = c[0]
							 | 
						||
| 
								 | 
							
								        c1 = c[1]
							 | 
						||
| 
								 | 
							
								    else:
							 | 
						||
| 
								 | 
							
								        x2 = 2*x
							 | 
						||
| 
								 | 
							
								        c0 = c[-2]
							 | 
						||
| 
								 | 
							
								        c1 = c[-1]
							 | 
						||
| 
								 | 
							
								        for i in range(3, len(c) + 1):
							 | 
						||
| 
								 | 
							
								            tmp = c0
							 | 
						||
| 
								 | 
							
								            c0 = c[-i] - c1
							 | 
						||
| 
								 | 
							
								            c1 = tmp + c1*x2
							 | 
						||
| 
								 | 
							
								    return c0 + c1*x
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebval2d(x, y, c):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Evaluate a 2-D Chebyshev series at points (x, y).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    This function returns the values:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(x,y) = \\sum_{i,j} c_{i,j} * T_i(x) * T_j(y)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The parameters `x` and `y` are converted to arrays only if they are
							 | 
						||
| 
								 | 
							
								    tuples or a lists, otherwise they are treated as a scalars and they
							 | 
						||
| 
								 | 
							
								    must have the same shape after conversion. In either case, either `x`
							 | 
						||
| 
								 | 
							
								    and `y` or their elements must support multiplication and addition both
							 | 
						||
| 
								 | 
							
								    with themselves and with the elements of `c`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` is a 1-D array a one is implicitly appended to its shape to make
							 | 
						||
| 
								 | 
							
								    it 2-D. The shape of the result will be c.shape[2:] + x.shape.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x, y : array_like, compatible objects
							 | 
						||
| 
								 | 
							
								        The two dimensional series is evaluated at the points `(x, y)`,
							 | 
						||
| 
								 | 
							
								        where `x` and `y` must have the same shape. If `x` or `y` is a list
							 | 
						||
| 
								 | 
							
								        or tuple, it is first converted to an ndarray, otherwise it is left
							 | 
						||
| 
								 | 
							
								        unchanged and if it isn't an ndarray it is treated as a scalar.
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of coefficients ordered so that the coefficient of the term
							 | 
						||
| 
								 | 
							
								        of multi-degree i,j is contained in ``c[i,j]``. If `c` has
							 | 
						||
| 
								 | 
							
								        dimension greater than 2 the remaining indices enumerate multiple
							 | 
						||
| 
								 | 
							
								        sets of coefficients.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    values : ndarray, compatible object
							 | 
						||
| 
								 | 
							
								        The values of the two dimensional Chebyshev series at points formed
							 | 
						||
| 
								 | 
							
								        from pairs of corresponding values from `x` and `y`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebval, chebgrid2d, chebval3d, chebgrid3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._valnd(chebval, c, x, y)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebgrid2d(x, y, c):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Evaluate a 2-D Chebyshev series on the Cartesian product of x and y.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    This function returns the values:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(a,b) = \\sum_{i,j} c_{i,j} * T_i(a) * T_j(b),
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where the points `(a, b)` consist of all pairs formed by taking
							 | 
						||
| 
								 | 
							
								    `a` from `x` and `b` from `y`. The resulting points form a grid with
							 | 
						||
| 
								 | 
							
								    `x` in the first dimension and `y` in the second.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The parameters `x` and `y` are converted to arrays only if they are
							 | 
						||
| 
								 | 
							
								    tuples or a lists, otherwise they are treated as a scalars. In either
							 | 
						||
| 
								 | 
							
								    case, either `x` and `y` or their elements must support multiplication
							 | 
						||
| 
								 | 
							
								    and addition both with themselves and with the elements of `c`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` has fewer than two dimensions, ones are implicitly appended to
							 | 
						||
| 
								 | 
							
								    its shape to make it 2-D. The shape of the result will be c.shape[2:] +
							 | 
						||
| 
								 | 
							
								    x.shape + y.shape.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x, y : array_like, compatible objects
							 | 
						||
| 
								 | 
							
								        The two dimensional series is evaluated at the points in the
							 | 
						||
| 
								 | 
							
								        Cartesian product of `x` and `y`.  If `x` or `y` is a list or
							 | 
						||
| 
								 | 
							
								        tuple, it is first converted to an ndarray, otherwise it is left
							 | 
						||
| 
								 | 
							
								        unchanged and, if it isn't an ndarray, it is treated as a scalar.
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of coefficients ordered so that the coefficient of the term of
							 | 
						||
| 
								 | 
							
								        multi-degree i,j is contained in `c[i,j]`. If `c` has dimension
							 | 
						||
| 
								 | 
							
								        greater than two the remaining indices enumerate multiple sets of
							 | 
						||
| 
								 | 
							
								        coefficients.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    values : ndarray, compatible object
							 | 
						||
| 
								 | 
							
								        The values of the two dimensional Chebyshev series at points in the
							 | 
						||
| 
								 | 
							
								        Cartesian product of `x` and `y`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebval, chebval2d, chebval3d, chebgrid3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._gridnd(chebval, c, x, y)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebval3d(x, y, z, c):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Evaluate a 3-D Chebyshev series at points (x, y, z).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    This function returns the values:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(x,y,z) = \\sum_{i,j,k} c_{i,j,k} * T_i(x) * T_j(y) * T_k(z)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The parameters `x`, `y`, and `z` are converted to arrays only if
							 | 
						||
| 
								 | 
							
								    they are tuples or a lists, otherwise they are treated as a scalars and
							 | 
						||
| 
								 | 
							
								    they must have the same shape after conversion. In either case, either
							 | 
						||
| 
								 | 
							
								    `x`, `y`, and `z` or their elements must support multiplication and
							 | 
						||
| 
								 | 
							
								    addition both with themselves and with the elements of `c`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` has fewer than 3 dimensions, ones are implicitly appended to its
							 | 
						||
| 
								 | 
							
								    shape to make it 3-D. The shape of the result will be c.shape[3:] +
							 | 
						||
| 
								 | 
							
								    x.shape.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x, y, z : array_like, compatible object
							 | 
						||
| 
								 | 
							
								        The three dimensional series is evaluated at the points
							 | 
						||
| 
								 | 
							
								        `(x, y, z)`, where `x`, `y`, and `z` must have the same shape.  If
							 | 
						||
| 
								 | 
							
								        any of `x`, `y`, or `z` is a list or tuple, it is first converted
							 | 
						||
| 
								 | 
							
								        to an ndarray, otherwise it is left unchanged and if it isn't an
							 | 
						||
| 
								 | 
							
								        ndarray it is  treated as a scalar.
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of coefficients ordered so that the coefficient of the term of
							 | 
						||
| 
								 | 
							
								        multi-degree i,j,k is contained in ``c[i,j,k]``. If `c` has dimension
							 | 
						||
| 
								 | 
							
								        greater than 3 the remaining indices enumerate multiple sets of
							 | 
						||
| 
								 | 
							
								        coefficients.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    values : ndarray, compatible object
							 | 
						||
| 
								 | 
							
								        The values of the multidimensional polynomial on points formed with
							 | 
						||
| 
								 | 
							
								        triples of corresponding values from `x`, `y`, and `z`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebval, chebval2d, chebgrid2d, chebgrid3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._valnd(chebval, c, x, y, z)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebgrid3d(x, y, z, c):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Evaluate a 3-D Chebyshev series on the Cartesian product of x, y, and z.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    This function returns the values:
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(a,b,c) = \\sum_{i,j,k} c_{i,j,k} * T_i(a) * T_j(b) * T_k(c)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where the points `(a, b, c)` consist of all triples formed by taking
							 | 
						||
| 
								 | 
							
								    `a` from `x`, `b` from `y`, and `c` from `z`. The resulting points form
							 | 
						||
| 
								 | 
							
								    a grid with `x` in the first dimension, `y` in the second, and `z` in
							 | 
						||
| 
								 | 
							
								    the third.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The parameters `x`, `y`, and `z` are converted to arrays only if they
							 | 
						||
| 
								 | 
							
								    are tuples or a lists, otherwise they are treated as a scalars. In
							 | 
						||
| 
								 | 
							
								    either case, either `x`, `y`, and `z` or their elements must support
							 | 
						||
| 
								 | 
							
								    multiplication and addition both with themselves and with the elements
							 | 
						||
| 
								 | 
							
								    of `c`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` has fewer than three dimensions, ones are implicitly appended to
							 | 
						||
| 
								 | 
							
								    its shape to make it 3-D. The shape of the result will be c.shape[3:] +
							 | 
						||
| 
								 | 
							
								    x.shape + y.shape + z.shape.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x, y, z : array_like, compatible objects
							 | 
						||
| 
								 | 
							
								        The three dimensional series is evaluated at the points in the
							 | 
						||
| 
								 | 
							
								        Cartesian product of `x`, `y`, and `z`.  If `x`,`y`, or `z` is a
							 | 
						||
| 
								 | 
							
								        list or tuple, it is first converted to an ndarray, otherwise it is
							 | 
						||
| 
								 | 
							
								        left unchanged and, if it isn't an ndarray, it is treated as a
							 | 
						||
| 
								 | 
							
								        scalar.
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        Array of coefficients ordered so that the coefficients for terms of
							 | 
						||
| 
								 | 
							
								        degree i,j are contained in ``c[i,j]``. If `c` has dimension
							 | 
						||
| 
								 | 
							
								        greater than two the remaining indices enumerate multiple sets of
							 | 
						||
| 
								 | 
							
								        coefficients.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    values : ndarray, compatible object
							 | 
						||
| 
								 | 
							
								        The values of the two dimensional polynomial at points in the Cartesian
							 | 
						||
| 
								 | 
							
								        product of `x` and `y`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebval, chebval2d, chebgrid2d, chebval3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._gridnd(chebval, c, x, y, z)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebvander(x, deg):
							 | 
						||
| 
								 | 
							
								    """Pseudo-Vandermonde matrix of given degree.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the pseudo-Vandermonde matrix of degree `deg` and sample points
							 | 
						||
| 
								 | 
							
								    `x`. The pseudo-Vandermonde matrix is defined by
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: V[..., i] = T_i(x),
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where `0 <= i <= deg`. The leading indices of `V` index the elements of
							 | 
						||
| 
								 | 
							
								    `x` and the last index is the degree of the Chebyshev polynomial.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If `c` is a 1-D array of coefficients of length `n + 1` and `V` is the
							 | 
						||
| 
								 | 
							
								    matrix ``V = chebvander(x, n)``, then ``np.dot(V, c)`` and
							 | 
						||
| 
								 | 
							
								    ``chebval(x, c)`` are the same up to roundoff.  This equivalence is
							 | 
						||
| 
								 | 
							
								    useful both for least squares fitting and for the evaluation of a large
							 | 
						||
| 
								 | 
							
								    number of Chebyshev series of the same degree and sample points.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x : array_like
							 | 
						||
| 
								 | 
							
								        Array of points. The dtype is converted to float64 or complex128
							 | 
						||
| 
								 | 
							
								        depending on whether any of the elements are complex. If `x` is
							 | 
						||
| 
								 | 
							
								        scalar it is converted to a 1-D array.
							 | 
						||
| 
								 | 
							
								    deg : int
							 | 
						||
| 
								 | 
							
								        Degree of the resulting matrix.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    vander : ndarray
							 | 
						||
| 
								 | 
							
								        The pseudo Vandermonde matrix. The shape of the returned matrix is
							 | 
						||
| 
								 | 
							
								        ``x.shape + (deg + 1,)``, where The last index is the degree of the
							 | 
						||
| 
								 | 
							
								        corresponding Chebyshev polynomial.  The dtype will be the same as
							 | 
						||
| 
								 | 
							
								        the converted `x`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    ideg = pu._deprecate_as_int(deg, "deg")
							 | 
						||
| 
								 | 
							
								    if ideg < 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("deg must be non-negative")
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    x = np.array(x, copy=False, ndmin=1) + 0.0
							 | 
						||
| 
								 | 
							
								    dims = (ideg + 1,) + x.shape
							 | 
						||
| 
								 | 
							
								    dtyp = x.dtype
							 | 
						||
| 
								 | 
							
								    v = np.empty(dims, dtype=dtyp)
							 | 
						||
| 
								 | 
							
								    # Use forward recursion to generate the entries.
							 | 
						||
| 
								 | 
							
								    v[0] = x*0 + 1
							 | 
						||
| 
								 | 
							
								    if ideg > 0:
							 | 
						||
| 
								 | 
							
								        x2 = 2*x
							 | 
						||
| 
								 | 
							
								        v[1] = x
							 | 
						||
| 
								 | 
							
								        for i in range(2, ideg + 1):
							 | 
						||
| 
								 | 
							
								            v[i] = v[i-1]*x2 - v[i-2]
							 | 
						||
| 
								 | 
							
								    return np.moveaxis(v, 0, -1)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebvander2d(x, y, deg):
							 | 
						||
| 
								 | 
							
								    """Pseudo-Vandermonde matrix of given degrees.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the pseudo-Vandermonde matrix of degrees `deg` and sample
							 | 
						||
| 
								 | 
							
								    points `(x, y)`. The pseudo-Vandermonde matrix is defined by
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: V[..., (deg[1] + 1)*i + j] = T_i(x) * T_j(y),
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where `0 <= i <= deg[0]` and `0 <= j <= deg[1]`. The leading indices of
							 | 
						||
| 
								 | 
							
								    `V` index the points `(x, y)` and the last index encodes the degrees of
							 | 
						||
| 
								 | 
							
								    the Chebyshev polynomials.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If ``V = chebvander2d(x, y, [xdeg, ydeg])``, then the columns of `V`
							 | 
						||
| 
								 | 
							
								    correspond to the elements of a 2-D coefficient array `c` of shape
							 | 
						||
| 
								 | 
							
								    (xdeg + 1, ydeg + 1) in the order
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: c_{00}, c_{01}, c_{02} ... , c_{10}, c_{11}, c_{12} ...
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    and ``np.dot(V, c.flat)`` and ``chebval2d(x, y, c)`` will be the same
							 | 
						||
| 
								 | 
							
								    up to roundoff. This equivalence is useful both for least squares
							 | 
						||
| 
								 | 
							
								    fitting and for the evaluation of a large number of 2-D Chebyshev
							 | 
						||
| 
								 | 
							
								    series of the same degrees and sample points.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x, y : array_like
							 | 
						||
| 
								 | 
							
								        Arrays of point coordinates, all of the same shape. The dtypes
							 | 
						||
| 
								 | 
							
								        will be converted to either float64 or complex128 depending on
							 | 
						||
| 
								 | 
							
								        whether any of the elements are complex. Scalars are converted to
							 | 
						||
| 
								 | 
							
								        1-D arrays.
							 | 
						||
| 
								 | 
							
								    deg : list of ints
							 | 
						||
| 
								 | 
							
								        List of maximum degrees of the form [x_deg, y_deg].
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    vander2d : ndarray
							 | 
						||
| 
								 | 
							
								        The shape of the returned matrix is ``x.shape + (order,)``, where
							 | 
						||
| 
								 | 
							
								        :math:`order = (deg[0]+1)*(deg[1]+1)`.  The dtype will be the same
							 | 
						||
| 
								 | 
							
								        as the converted `x` and `y`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebvander, chebvander3d, chebval2d, chebval3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._vander_nd_flat((chebvander, chebvander), (x, y), deg)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebvander3d(x, y, z, deg):
							 | 
						||
| 
								 | 
							
								    """Pseudo-Vandermonde matrix of given degrees.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the pseudo-Vandermonde matrix of degrees `deg` and sample
							 | 
						||
| 
								 | 
							
								    points `(x, y, z)`. If `l, m, n` are the given degrees in `x, y, z`,
							 | 
						||
| 
								 | 
							
								    then The pseudo-Vandermonde matrix is defined by
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: V[..., (m+1)(n+1)i + (n+1)j + k] = T_i(x)*T_j(y)*T_k(z),
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where `0 <= i <= l`, `0 <= j <= m`, and `0 <= j <= n`.  The leading
							 | 
						||
| 
								 | 
							
								    indices of `V` index the points `(x, y, z)` and the last index encodes
							 | 
						||
| 
								 | 
							
								    the degrees of the Chebyshev polynomials.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If ``V = chebvander3d(x, y, z, [xdeg, ydeg, zdeg])``, then the columns
							 | 
						||
| 
								 | 
							
								    of `V` correspond to the elements of a 3-D coefficient array `c` of
							 | 
						||
| 
								 | 
							
								    shape (xdeg + 1, ydeg + 1, zdeg + 1) in the order
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: c_{000}, c_{001}, c_{002},... , c_{010}, c_{011}, c_{012},...
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    and ``np.dot(V, c.flat)`` and ``chebval3d(x, y, z, c)`` will be the
							 | 
						||
| 
								 | 
							
								    same up to roundoff. This equivalence is useful both for least squares
							 | 
						||
| 
								 | 
							
								    fitting and for the evaluation of a large number of 3-D Chebyshev
							 | 
						||
| 
								 | 
							
								    series of the same degrees and sample points.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x, y, z : array_like
							 | 
						||
| 
								 | 
							
								        Arrays of point coordinates, all of the same shape. The dtypes will
							 | 
						||
| 
								 | 
							
								        be converted to either float64 or complex128 depending on whether
							 | 
						||
| 
								 | 
							
								        any of the elements are complex. Scalars are converted to 1-D
							 | 
						||
| 
								 | 
							
								        arrays.
							 | 
						||
| 
								 | 
							
								    deg : list of ints
							 | 
						||
| 
								 | 
							
								        List of maximum degrees of the form [x_deg, y_deg, z_deg].
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    vander3d : ndarray
							 | 
						||
| 
								 | 
							
								        The shape of the returned matrix is ``x.shape + (order,)``, where
							 | 
						||
| 
								 | 
							
								        :math:`order = (deg[0]+1)*(deg[1]+1)*(deg[2]+1)`.  The dtype will
							 | 
						||
| 
								 | 
							
								        be the same as the converted `x`, `y`, and `z`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebvander, chebvander3d, chebval2d, chebval3d
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._vander_nd_flat((chebvander, chebvander, chebvander), (x, y, z), deg)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebfit(x, y, deg, rcond=None, full=False, w=None):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Least squares fit of Chebyshev series to data.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Return the coefficients of a Chebyshev series of degree `deg` that is the
							 | 
						||
| 
								 | 
							
								    least squares fit to the data values `y` given at points `x`. If `y` is
							 | 
						||
| 
								 | 
							
								    1-D the returned coefficients will also be 1-D. If `y` is 2-D multiple
							 | 
						||
| 
								 | 
							
								    fits are done, one for each column of `y`, and the resulting
							 | 
						||
| 
								 | 
							
								    coefficients are stored in the corresponding columns of a 2-D return.
							 | 
						||
| 
								 | 
							
								    The fitted polynomial(s) are in the form
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math::  p(x) = c_0 + c_1 * T_1(x) + ... + c_n * T_n(x),
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where `n` is `deg`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x : array_like, shape (M,)
							 | 
						||
| 
								 | 
							
								        x-coordinates of the M sample points ``(x[i], y[i])``.
							 | 
						||
| 
								 | 
							
								    y : array_like, shape (M,) or (M, K)
							 | 
						||
| 
								 | 
							
								        y-coordinates of the sample points. Several data sets of sample
							 | 
						||
| 
								 | 
							
								        points sharing the same x-coordinates can be fitted at once by
							 | 
						||
| 
								 | 
							
								        passing in a 2D-array that contains one dataset per column.
							 | 
						||
| 
								 | 
							
								    deg : int or 1-D array_like
							 | 
						||
| 
								 | 
							
								        Degree(s) of the fitting polynomials. If `deg` is a single integer,
							 | 
						||
| 
								 | 
							
								        all terms up to and including the `deg`'th term are included in the
							 | 
						||
| 
								 | 
							
								        fit. For NumPy versions >= 1.11.0 a list of integers specifying the
							 | 
						||
| 
								 | 
							
								        degrees of the terms to include may be used instead.
							 | 
						||
| 
								 | 
							
								    rcond : float, optional
							 | 
						||
| 
								 | 
							
								        Relative condition number of the fit. Singular values smaller than
							 | 
						||
| 
								 | 
							
								        this relative to the largest singular value will be ignored. The
							 | 
						||
| 
								 | 
							
								        default value is len(x)*eps, where eps is the relative precision of
							 | 
						||
| 
								 | 
							
								        the float type, about 2e-16 in most cases.
							 | 
						||
| 
								 | 
							
								    full : bool, optional
							 | 
						||
| 
								 | 
							
								        Switch determining nature of return value. When it is False (the
							 | 
						||
| 
								 | 
							
								        default) just the coefficients are returned, when True diagnostic
							 | 
						||
| 
								 | 
							
								        information from the singular value decomposition is also returned.
							 | 
						||
| 
								 | 
							
								    w : array_like, shape (`M`,), optional
							 | 
						||
| 
								 | 
							
								        Weights. If not None, the weight ``w[i]`` applies to the unsquared
							 | 
						||
| 
								 | 
							
								        residual ``y[i] - y_hat[i]`` at ``x[i]``. Ideally the weights are
							 | 
						||
| 
								 | 
							
								        chosen so that the errors of the products ``w[i]*y[i]`` all have the
							 | 
						||
| 
								 | 
							
								        same variance.  When using inverse-variance weighting, use
							 | 
						||
| 
								 | 
							
								        ``w[i] = 1/sigma(y[i])``.  The default value is None.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        .. versionadded:: 1.5.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    coef : ndarray, shape (M,) or (M, K)
							 | 
						||
| 
								 | 
							
								        Chebyshev coefficients ordered from low to high. If `y` was 2-D,
							 | 
						||
| 
								 | 
							
								        the coefficients for the data in column k  of `y` are in column
							 | 
						||
| 
								 | 
							
								        `k`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    [residuals, rank, singular_values, rcond] : list
							 | 
						||
| 
								 | 
							
								        These values are only returned if ``full == True``
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        - residuals -- sum of squared residuals of the least squares fit
							 | 
						||
| 
								 | 
							
								        - rank -- the numerical rank of the scaled Vandermonde matrix
							 | 
						||
| 
								 | 
							
								        - singular_values -- singular values of the scaled Vandermonde matrix
							 | 
						||
| 
								 | 
							
								        - rcond -- value of `rcond`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        For more details, see `numpy.linalg.lstsq`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Warns
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    RankWarning
							 | 
						||
| 
								 | 
							
								        The rank of the coefficient matrix in the least-squares fit is
							 | 
						||
| 
								 | 
							
								        deficient. The warning is only raised if ``full == False``.  The
							 | 
						||
| 
								 | 
							
								        warnings can be turned off by
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        >>> import warnings
							 | 
						||
| 
								 | 
							
								        >>> warnings.simplefilter('ignore', np.RankWarning)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.polynomial.polyfit
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.legendre.legfit
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.laguerre.lagfit
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite.hermfit
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite_e.hermefit
							 | 
						||
| 
								 | 
							
								    chebval : Evaluates a Chebyshev series.
							 | 
						||
| 
								 | 
							
								    chebvander : Vandermonde matrix of Chebyshev series.
							 | 
						||
| 
								 | 
							
								    chebweight : Chebyshev weight function.
							 | 
						||
| 
								 | 
							
								    numpy.linalg.lstsq : Computes a least-squares fit from the matrix.
							 | 
						||
| 
								 | 
							
								    scipy.interpolate.UnivariateSpline : Computes spline fits.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The solution is the coefficients of the Chebyshev series `p` that
							 | 
						||
| 
								 | 
							
								    minimizes the sum of the weighted squared errors
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: E = \\sum_j w_j^2 * |y_j - p(x_j)|^2,
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where :math:`w_j` are the weights. This problem is solved by setting up
							 | 
						||
| 
								 | 
							
								    as the (typically) overdetermined matrix equation
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: V(x) * c = w * y,
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    where `V` is the weighted pseudo Vandermonde matrix of `x`, `c` are the
							 | 
						||
| 
								 | 
							
								    coefficients to be solved for, `w` are the weights, and `y` are the
							 | 
						||
| 
								 | 
							
								    observed values.  This equation is then solved using the singular value
							 | 
						||
| 
								 | 
							
								    decomposition of `V`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    If some of the singular values of `V` are so small that they are
							 | 
						||
| 
								 | 
							
								    neglected, then a `RankWarning` will be issued. This means that the
							 | 
						||
| 
								 | 
							
								    coefficient values may be poorly determined. Using a lower order fit
							 | 
						||
| 
								 | 
							
								    will usually get rid of the warning.  The `rcond` parameter can also be
							 | 
						||
| 
								 | 
							
								    set to a value smaller than its default, but the resulting fit may be
							 | 
						||
| 
								 | 
							
								    spurious and have large contributions from roundoff error.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Fits using Chebyshev series are usually better conditioned than fits
							 | 
						||
| 
								 | 
							
								    using power series, but much can depend on the distribution of the
							 | 
						||
| 
								 | 
							
								    sample points and the smoothness of the data. If the quality of the fit
							 | 
						||
| 
								 | 
							
								    is inadequate splines may be a good alternative.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    References
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    .. [1] Wikipedia, "Curve fitting",
							 | 
						||
| 
								 | 
							
								           https://en.wikipedia.org/wiki/Curve_fitting
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    return pu._fit(chebvander, x, y, deg, rcond, full, w)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebcompanion(c):
							 | 
						||
| 
								 | 
							
								    """Return the scaled companion matrix of c.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The basis polynomials are scaled so that the companion matrix is
							 | 
						||
| 
								 | 
							
								    symmetric when `c` is a Chebyshev basis polynomial. This provides
							 | 
						||
| 
								 | 
							
								    better eigenvalue estimates than the unscaled case and for basis
							 | 
						||
| 
								 | 
							
								    polynomials the eigenvalues are guaranteed to be real if
							 | 
						||
| 
								 | 
							
								    `numpy.linalg.eigvalsh` is used to obtain them.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : array_like
							 | 
						||
| 
								 | 
							
								        1-D array of Chebyshev series coefficients ordered from low to high
							 | 
						||
| 
								 | 
							
								        degree.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    mat : ndarray
							 | 
						||
| 
								 | 
							
								        Scaled companion matrix of dimensions (deg, deg).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # c is a trimmed copy
							 | 
						||
| 
								 | 
							
								    [c] = pu.as_series([c])
							 | 
						||
| 
								 | 
							
								    if len(c) < 2:
							 | 
						||
| 
								 | 
							
								        raise ValueError('Series must have maximum degree of at least 1.')
							 | 
						||
| 
								 | 
							
								    if len(c) == 2:
							 | 
						||
| 
								 | 
							
								        return np.array([[-c[0]/c[1]]])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    n = len(c) - 1
							 | 
						||
| 
								 | 
							
								    mat = np.zeros((n, n), dtype=c.dtype)
							 | 
						||
| 
								 | 
							
								    scl = np.array([1.] + [np.sqrt(.5)]*(n-1))
							 | 
						||
| 
								 | 
							
								    top = mat.reshape(-1)[1::n+1]
							 | 
						||
| 
								 | 
							
								    bot = mat.reshape(-1)[n::n+1]
							 | 
						||
| 
								 | 
							
								    top[0] = np.sqrt(.5)
							 | 
						||
| 
								 | 
							
								    top[1:] = 1/2
							 | 
						||
| 
								 | 
							
								    bot[...] = top
							 | 
						||
| 
								 | 
							
								    mat[:, -1] -= (c[:-1]/c[-1])*(scl/scl[-1])*.5
							 | 
						||
| 
								 | 
							
								    return mat
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebroots(c):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Compute the roots of a Chebyshev series.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Return the roots (a.k.a. "zeros") of the polynomial
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: p(x) = \\sum_i c[i] * T_i(x).
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    c : 1-D array_like
							 | 
						||
| 
								 | 
							
								        1-D array of coefficients.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    out : ndarray
							 | 
						||
| 
								 | 
							
								        Array of the roots of the series. If all the roots are real,
							 | 
						||
| 
								 | 
							
								        then `out` is also real, otherwise it is complex.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.polynomial.polyroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.legendre.legroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.laguerre.lagroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite.hermroots
							 | 
						||
| 
								 | 
							
								    numpy.polynomial.hermite_e.hermeroots
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								    The root estimates are obtained as the eigenvalues of the companion
							 | 
						||
| 
								 | 
							
								    matrix, Roots far from the origin of the complex plane may have large
							 | 
						||
| 
								 | 
							
								    errors due to the numerical instability of the series for such
							 | 
						||
| 
								 | 
							
								    values. Roots with multiplicity greater than 1 will also show larger
							 | 
						||
| 
								 | 
							
								    errors as the value of the series near such points is relatively
							 | 
						||
| 
								 | 
							
								    insensitive to errors in the roots. Isolated roots near the origin can
							 | 
						||
| 
								 | 
							
								    be improved by a few iterations of Newton's method.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The Chebyshev series basis polynomials aren't powers of `x` so the
							 | 
						||
| 
								 | 
							
								    results of this function may seem unintuitive.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> import numpy.polynomial.chebyshev as cheb
							 | 
						||
| 
								 | 
							
								    >>> cheb.chebroots((-1, 1,-1, 1)) # T3 - T2 + T1 - T0 has real roots
							 | 
						||
| 
								 | 
							
								    array([ -5.00000000e-01,   2.60860684e-17,   1.00000000e+00]) # may vary
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # c is a trimmed copy
							 | 
						||
| 
								 | 
							
								    [c] = pu.as_series([c])
							 | 
						||
| 
								 | 
							
								    if len(c) < 2:
							 | 
						||
| 
								 | 
							
								        return np.array([], dtype=c.dtype)
							 | 
						||
| 
								 | 
							
								    if len(c) == 2:
							 | 
						||
| 
								 | 
							
								        return np.array([-c[0]/c[1]])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    # rotated companion matrix reduces error
							 | 
						||
| 
								 | 
							
								    m = chebcompanion(c)[::-1,::-1]
							 | 
						||
| 
								 | 
							
								    r = la.eigvals(m)
							 | 
						||
| 
								 | 
							
								    r.sort()
							 | 
						||
| 
								 | 
							
								    return r
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebinterpolate(func, deg, args=()):
							 | 
						||
| 
								 | 
							
								    """Interpolate a function at the Chebyshev points of the first kind.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns the Chebyshev series that interpolates `func` at the Chebyshev
							 | 
						||
| 
								 | 
							
								    points of the first kind in the interval [-1, 1]. The interpolating
							 | 
						||
| 
								 | 
							
								    series tends to a minmax approximation to `func` with increasing `deg`
							 | 
						||
| 
								 | 
							
								    if the function is continuous in the interval.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.14.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    func : function
							 | 
						||
| 
								 | 
							
								        The function to be approximated. It must be a function of a single
							 | 
						||
| 
								 | 
							
								        variable of the form ``f(x, a, b, c...)``, where ``a, b, c...`` are
							 | 
						||
| 
								 | 
							
								        extra arguments passed in the `args` parameter.
							 | 
						||
| 
								 | 
							
								    deg : int
							 | 
						||
| 
								 | 
							
								        Degree of the interpolating polynomial
							 | 
						||
| 
								 | 
							
								    args : tuple, optional
							 | 
						||
| 
								 | 
							
								        Extra arguments to be used in the function call. Default is no extra
							 | 
						||
| 
								 | 
							
								        arguments.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    coef : ndarray, shape (deg + 1,)
							 | 
						||
| 
								 | 
							
								        Chebyshev coefficients of the interpolating series ordered from low to
							 | 
						||
| 
								 | 
							
								        high.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Examples
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    >>> import numpy.polynomial.chebyshev as C
							 | 
						||
| 
								 | 
							
								    >>> C.chebfromfunction(lambda x: np.tanh(x) + 0.5, 8)
							 | 
						||
| 
								 | 
							
								    array([  5.00000000e-01,   8.11675684e-01,  -9.86864911e-17,
							 | 
						||
| 
								 | 
							
								            -5.42457905e-02,  -2.71387850e-16,   4.51658839e-03,
							 | 
						||
| 
								 | 
							
								             2.46716228e-17,  -3.79694221e-04,  -3.26899002e-16])
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The Chebyshev polynomials used in the interpolation are orthogonal when
							 | 
						||
| 
								 | 
							
								    sampled at the Chebyshev points of the first kind. If it is desired to
							 | 
						||
| 
								 | 
							
								    constrain some of the coefficients they can simply be set to the desired
							 | 
						||
| 
								 | 
							
								    value after the interpolation, no new interpolation or fit is needed. This
							 | 
						||
| 
								 | 
							
								    is especially useful if it is known apriori that some of coefficients are
							 | 
						||
| 
								 | 
							
								    zero. For instance, if the function is even then the coefficients of the
							 | 
						||
| 
								 | 
							
								    terms of odd degree in the result can be set to zero.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    deg = np.asarray(deg)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    # check arguments.
							 | 
						||
| 
								 | 
							
								    if deg.ndim > 0 or deg.dtype.kind not in 'iu' or deg.size == 0:
							 | 
						||
| 
								 | 
							
								        raise TypeError("deg must be an int")
							 | 
						||
| 
								 | 
							
								    if deg < 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("expected deg >= 0")
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    order = deg + 1
							 | 
						||
| 
								 | 
							
								    xcheb = chebpts1(order)
							 | 
						||
| 
								 | 
							
								    yfunc = func(xcheb, *args)
							 | 
						||
| 
								 | 
							
								    m = chebvander(xcheb, deg)
							 | 
						||
| 
								 | 
							
								    c = np.dot(m.T, yfunc)
							 | 
						||
| 
								 | 
							
								    c[0] /= order
							 | 
						||
| 
								 | 
							
								    c[1:] /= 0.5*order
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    return c
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebgauss(deg):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Gauss-Chebyshev quadrature.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Computes the sample points and weights for Gauss-Chebyshev quadrature.
							 | 
						||
| 
								 | 
							
								    These sample points and weights will correctly integrate polynomials of
							 | 
						||
| 
								 | 
							
								    degree :math:`2*deg - 1` or less over the interval :math:`[-1, 1]` with
							 | 
						||
| 
								 | 
							
								    the weight function :math:`f(x) = 1/\\sqrt{1 - x^2}`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    deg : int
							 | 
						||
| 
								 | 
							
								        Number of sample points and weights. It must be >= 1.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    x : ndarray
							 | 
						||
| 
								 | 
							
								        1-D ndarray containing the sample points.
							 | 
						||
| 
								 | 
							
								    y : ndarray
							 | 
						||
| 
								 | 
							
								        1-D ndarray containing the weights.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The results have only been tested up to degree 100, higher degrees may
							 | 
						||
| 
								 | 
							
								    be problematic. For Gauss-Chebyshev there are closed form solutions for
							 | 
						||
| 
								 | 
							
								    the sample points and weights. If n = `deg`, then
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: x_i = \\cos(\\pi (2 i - 1) / (2 n))
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. math:: w_i = \\pi / n
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    ideg = pu._deprecate_as_int(deg, "deg")
							 | 
						||
| 
								 | 
							
								    if ideg <= 0:
							 | 
						||
| 
								 | 
							
								        raise ValueError("deg must be a positive integer")
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    x = np.cos(np.pi * np.arange(1, 2*ideg, 2) / (2.0*ideg))
							 | 
						||
| 
								 | 
							
								    w = np.ones(ideg)*(np.pi/ideg)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    return x, w
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebweight(x):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    The weight function of the Chebyshev polynomials.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The weight function is :math:`1/\\sqrt{1 - x^2}` and the interval of
							 | 
						||
| 
								 | 
							
								    integration is :math:`[-1, 1]`. The Chebyshev polynomials are
							 | 
						||
| 
								 | 
							
								    orthogonal, but not normalized, with respect to this weight function.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    x : array_like
							 | 
						||
| 
								 | 
							
								       Values at which the weight function will be computed.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    w : ndarray
							 | 
						||
| 
								 | 
							
								       The weight function at `x`.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.7.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    w = 1./(np.sqrt(1. + x) * np.sqrt(1. - x))
							 | 
						||
| 
								 | 
							
								    return w
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebpts1(npts):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Chebyshev points of the first kind.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The Chebyshev points of the first kind are the points ``cos(x)``,
							 | 
						||
| 
								 | 
							
								    where ``x = [pi*(k + .5)/npts for k in range(npts)]``.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    npts : int
							 | 
						||
| 
								 | 
							
								        Number of sample points desired.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    pts : ndarray
							 | 
						||
| 
								 | 
							
								        The Chebyshev points of the first kind.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    See Also
							 | 
						||
| 
								 | 
							
								    --------
							 | 
						||
| 
								 | 
							
								    chebpts2
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.5.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    _npts = int(npts)
							 | 
						||
| 
								 | 
							
								    if _npts != npts:
							 | 
						||
| 
								 | 
							
								        raise ValueError("npts must be integer")
							 | 
						||
| 
								 | 
							
								    if _npts < 1:
							 | 
						||
| 
								 | 
							
								        raise ValueError("npts must be >= 1")
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    x = 0.5 * np.pi / _npts * np.arange(-_npts+1, _npts+1, 2)
							 | 
						||
| 
								 | 
							
								    return np.sin(x)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								def chebpts2(npts):
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    Chebyshev points of the second kind.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The Chebyshev points of the second kind are the points ``cos(x)``,
							 | 
						||
| 
								 | 
							
								    where ``x = [pi*k/(npts - 1) for k in range(npts)]`` sorted in ascending
							 | 
						||
| 
								 | 
							
								    order.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    npts : int
							 | 
						||
| 
								 | 
							
								        Number of sample points desired.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Returns
							 | 
						||
| 
								 | 
							
								    -------
							 | 
						||
| 
								 | 
							
								    pts : ndarray
							 | 
						||
| 
								 | 
							
								        The Chebyshev points of the second kind.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Notes
							 | 
						||
| 
								 | 
							
								    -----
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    .. versionadded:: 1.5.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    _npts = int(npts)
							 | 
						||
| 
								 | 
							
								    if _npts != npts:
							 | 
						||
| 
								 | 
							
								        raise ValueError("npts must be integer")
							 | 
						||
| 
								 | 
							
								    if _npts < 2:
							 | 
						||
| 
								 | 
							
								        raise ValueError("npts must be >= 2")
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    x = np.linspace(-np.pi, 0, _npts)
							 | 
						||
| 
								 | 
							
								    return np.cos(x)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								#
							 | 
						||
| 
								 | 
							
								# Chebyshev series class
							 | 
						||
| 
								 | 
							
								#
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								class Chebyshev(ABCPolyBase):
							 | 
						||
| 
								 | 
							
								    """A Chebyshev series class.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    The Chebyshev class provides the standard Python numerical methods
							 | 
						||
| 
								 | 
							
								    '+', '-', '*', '//', '%', 'divmod', '**', and '()' as well as the
							 | 
						||
| 
								 | 
							
								    methods listed below.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    Parameters
							 | 
						||
| 
								 | 
							
								    ----------
							 | 
						||
| 
								 | 
							
								    coef : array_like
							 | 
						||
| 
								 | 
							
								        Chebyshev coefficients in order of increasing degree, i.e.,
							 | 
						||
| 
								 | 
							
								        ``(1, 2, 3)`` gives ``1*T_0(x) + 2*T_1(x) + 3*T_2(x)``.
							 | 
						||
| 
								 | 
							
								    domain : (2,) array_like, optional
							 | 
						||
| 
								 | 
							
								        Domain to use. The interval ``[domain[0], domain[1]]`` is mapped
							 | 
						||
| 
								 | 
							
								        to the interval ``[window[0], window[1]]`` by shifting and scaling.
							 | 
						||
| 
								 | 
							
								        The default value is [-1, 1].
							 | 
						||
| 
								 | 
							
								    window : (2,) array_like, optional
							 | 
						||
| 
								 | 
							
								        Window, see `domain` for its use. The default value is [-1, 1].
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        .. versionadded:: 1.6.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    """
							 | 
						||
| 
								 | 
							
								    # Virtual Functions
							 | 
						||
| 
								 | 
							
								    _add = staticmethod(chebadd)
							 | 
						||
| 
								 | 
							
								    _sub = staticmethod(chebsub)
							 | 
						||
| 
								 | 
							
								    _mul = staticmethod(chebmul)
							 | 
						||
| 
								 | 
							
								    _div = staticmethod(chebdiv)
							 | 
						||
| 
								 | 
							
								    _pow = staticmethod(chebpow)
							 | 
						||
| 
								 | 
							
								    _val = staticmethod(chebval)
							 | 
						||
| 
								 | 
							
								    _int = staticmethod(chebint)
							 | 
						||
| 
								 | 
							
								    _der = staticmethod(chebder)
							 | 
						||
| 
								 | 
							
								    _fit = staticmethod(chebfit)
							 | 
						||
| 
								 | 
							
								    _line = staticmethod(chebline)
							 | 
						||
| 
								 | 
							
								    _roots = staticmethod(chebroots)
							 | 
						||
| 
								 | 
							
								    _fromroots = staticmethod(chebfromroots)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    @classmethod
							 | 
						||
| 
								 | 
							
								    def interpolate(cls, func, deg, domain=None, args=()):
							 | 
						||
| 
								 | 
							
								        """Interpolate a function at the Chebyshev points of the first kind.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        Returns the series that interpolates `func` at the Chebyshev points of
							 | 
						||
| 
								 | 
							
								        the first kind scaled and shifted to the `domain`. The resulting series
							 | 
						||
| 
								 | 
							
								        tends to a minmax approximation of `func` when the function is
							 | 
						||
| 
								 | 
							
								        continuous in the domain.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        .. versionadded:: 1.14.0
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        Parameters
							 | 
						||
| 
								 | 
							
								        ----------
							 | 
						||
| 
								 | 
							
								        func : function
							 | 
						||
| 
								 | 
							
								            The function to be interpolated. It must be a function of a single
							 | 
						||
| 
								 | 
							
								            variable of the form ``f(x, a, b, c...)``, where ``a, b, c...`` are
							 | 
						||
| 
								 | 
							
								            extra arguments passed in the `args` parameter.
							 | 
						||
| 
								 | 
							
								        deg : int
							 | 
						||
| 
								 | 
							
								            Degree of the interpolating polynomial.
							 | 
						||
| 
								 | 
							
								        domain : {None, [beg, end]}, optional
							 | 
						||
| 
								 | 
							
								            Domain over which `func` is interpolated. The default is None, in
							 | 
						||
| 
								 | 
							
								            which case the domain is [-1, 1].
							 | 
						||
| 
								 | 
							
								        args : tuple, optional
							 | 
						||
| 
								 | 
							
								            Extra arguments to be used in the function call. Default is no
							 | 
						||
| 
								 | 
							
								            extra arguments.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        Returns
							 | 
						||
| 
								 | 
							
								        -------
							 | 
						||
| 
								 | 
							
								        polynomial : Chebyshev instance
							 | 
						||
| 
								 | 
							
								            Interpolating Chebyshev instance.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        Notes
							 | 
						||
| 
								 | 
							
								        -----
							 | 
						||
| 
								 | 
							
								        See `numpy.polynomial.chebfromfunction` for more details.
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								        """
							 | 
						||
| 
								 | 
							
								        if domain is None:
							 | 
						||
| 
								 | 
							
								            domain = cls.domain
							 | 
						||
| 
								 | 
							
								        xfunc = lambda x: func(pu.mapdomain(x, cls.window, domain), *args)
							 | 
						||
| 
								 | 
							
								        coef = chebinterpolate(xfunc, deg)
							 | 
						||
| 
								 | 
							
								        return cls(coef, domain=domain)
							 | 
						||
| 
								 | 
							
								
							 | 
						||
| 
								 | 
							
								    # Virtual properties
							 | 
						||
| 
								 | 
							
								    domain = np.array(chebdomain)
							 | 
						||
| 
								 | 
							
								    window = np.array(chebdomain)
							 | 
						||
| 
								 | 
							
								    basis_name = 'T'
							 |