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_infnorm.py
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_infnorm.py
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# -*- coding: utf-8 -*-
# _infnorm.py
# This module provides the infnorm function.
# Copyright 2013 Giuseppe Venturini
# This file is part of python-deltasigma.
#
# python-deltasigma is a 1:1 Python replacement of Richard Schreier's
# MATLAB delta sigma toolbox (aka "delsigma"), upon which it is heavily based.
# The delta sigma toolbox is (c) 2009, Richard Schreier.
#
# python-deltasigma is distributed in the hope that it will be useful,
# but WITHOUT ANY WARRANTY; without even the implied warranty of
# MERCHANTABILITY or FITNESS FOR A PARTICULAR PURPOSE. See the
# LICENSE file for the licensing terms.
"""This module provides the infnorm() function, which finds the infinity
norm of a z-domain transfer function.
"""
from __future__ import division
from warnings import warn
import numpy as np
from scipy.optimize import fminbound
from ._nabsH import nabsH
from ._evalTF import evalTF
def infnorm(H):
"""Find the infinity norm of a z-domain transfer function.
"""
# Get a rough idea of the location of the maximum.
N = 129
w = np.linspace(0, 2*np.pi, num=N, endpoint=True)
dw = 2*np.pi/(N-1)
Hval = evalTF(H, np.exp(1j*w))
Hinf = np.max(np.abs(Hval))
wi = np.where(np.abs(Hval) == Hinf)[0]
# Home in using the scipy "fminbound" function.
# original MATLAB code:
# wmax = fminbnd(nabsH, w(wi)-dw, w(wi)+dw, options, H);
wmax = fminbound(nabsH, w[wi]-dw, w[wi]+dw, args=(H,), \
xtol=1e-08, maxfun=5000, full_output=0)
if wmax is None:
warn('Hinf: Warning. scipy.optimize operation failed.'
+ ' The result returned may not be very accurate.')
wmax = w[wi]
Hinf = -nabsH(wmax, H);
fmax = wmax/(2*np.pi);
return Hinf, fmax
def test_infnorm():
"""Test function for infnorm()"""
# FIXME M/P test needed
num, den = np.poly([3, 0.3, 1]), np.poly([2, 0.5, .25])
H = (num, den)
Hinf, fmax = infnorm(H)
assert np.allclose((Hinf, fmax), (np.array([ 1.84888889]), np.array([ 0.50000001])),
atol=1e-8, rtol=1e-5)