peacock-data-public-datasets-idc-cronscript
/
venv
/lib
/python3.10
/site-packages
/scipy
/signal
/_czt.py
# This program is public domain | |
# Authors: Paul Kienzle, Nadav Horesh | |
""" | |
Chirp z-transform. | |
We provide two interfaces to the chirp z-transform: an object interface | |
which precalculates part of the transform and can be applied efficiently | |
to many different data sets, and a functional interface which is applied | |
only to the given data set. | |
Transforms | |
---------- | |
CZT : callable (x, axis=-1) -> array | |
Define a chirp z-transform that can be applied to different signals. | |
ZoomFFT : callable (x, axis=-1) -> array | |
Define a Fourier transform on a range of frequencies. | |
Functions | |
--------- | |
czt : array | |
Compute the chirp z-transform for a signal. | |
zoom_fft : array | |
Compute the Fourier transform on a range of frequencies. | |
""" | |
import cmath | |
import numbers | |
import numpy as np | |
from numpy import pi, arange | |
from scipy.fft import fft, ifft, next_fast_len | |
__all__ = ['czt', 'zoom_fft', 'CZT', 'ZoomFFT', 'czt_points'] | |
def _validate_sizes(n, m): | |
if n < 1 or not isinstance(n, numbers.Integral): | |
raise ValueError('Invalid number of CZT data ' | |
f'points ({n}) specified. ' | |
'n must be positive and integer type.') | |
if m is None: | |
m = n | |
elif m < 1 or not isinstance(m, numbers.Integral): | |
raise ValueError('Invalid number of CZT output ' | |
f'points ({m}) specified. ' | |
'm must be positive and integer type.') | |
return m | |
def czt_points(m, w=None, a=1+0j): | |
""" | |
Return the points at which the chirp z-transform is computed. | |
Parameters | |
---------- | |
m : int | |
The number of points desired. | |
w : complex, optional | |
The ratio between points in each step. | |
Defaults to equally spaced points around the entire unit circle. | |
a : complex, optional | |
The starting point in the complex plane. Default is 1+0j. | |
Returns | |
------- | |
out : ndarray | |
The points in the Z plane at which `CZT` samples the z-transform, | |
when called with arguments `m`, `w`, and `a`, as complex numbers. | |
See Also | |
-------- | |
CZT : Class that creates a callable chirp z-transform function. | |
czt : Convenience function for quickly calculating CZT. | |
Examples | |
-------- | |
Plot the points of a 16-point FFT: | |
>>> import numpy as np | |
>>> from scipy.signal import czt_points | |
>>> points = czt_points(16) | |
>>> import matplotlib.pyplot as plt | |
>>> plt.plot(points.real, points.imag, 'o') | |
>>> plt.gca().add_patch(plt.Circle((0,0), radius=1, fill=False, alpha=.3)) | |
>>> plt.axis('equal') | |
>>> plt.show() | |
and a 91-point logarithmic spiral that crosses the unit circle: | |
>>> m, w, a = 91, 0.995*np.exp(-1j*np.pi*.05), 0.8*np.exp(1j*np.pi/6) | |
>>> points = czt_points(m, w, a) | |
>>> plt.plot(points.real, points.imag, 'o') | |
>>> plt.gca().add_patch(plt.Circle((0,0), radius=1, fill=False, alpha=.3)) | |
>>> plt.axis('equal') | |
>>> plt.show() | |
""" | |
m = _validate_sizes(1, m) | |
k = arange(m) | |
a = 1.0 * a # at least float | |
if w is None: | |
# Nothing specified, default to FFT | |
return a * np.exp(2j * pi * k / m) | |
else: | |
# w specified | |
w = 1.0 * w # at least float | |
return a * w**-k | |
class CZT: | |
""" | |
Create a callable chirp z-transform function. | |
Transform to compute the frequency response around a spiral. | |
Objects of this class are callables which can compute the | |
chirp z-transform on their inputs. This object precalculates the constant | |
chirps used in the given transform. | |
Parameters | |
---------- | |
n : int | |
The size of the signal. | |
m : int, optional | |
The number of output points desired. Default is `n`. | |
w : complex, optional | |
The ratio between points in each step. This must be precise or the | |
accumulated error will degrade the tail of the output sequence. | |
Defaults to equally spaced points around the entire unit circle. | |
a : complex, optional | |
The starting point in the complex plane. Default is 1+0j. | |
Returns | |
------- | |
f : CZT | |
Callable object ``f(x, axis=-1)`` for computing the chirp z-transform | |
on `x`. | |
See Also | |
-------- | |
czt : Convenience function for quickly calculating CZT. | |
ZoomFFT : Class that creates a callable partial FFT function. | |
Notes | |
----- | |
The defaults are chosen such that ``f(x)`` is equivalent to | |
``fft.fft(x)`` and, if ``m > len(x)``, that ``f(x, m)`` is equivalent to | |
``fft.fft(x, m)``. | |
If `w` does not lie on the unit circle, then the transform will be | |
around a spiral with exponentially-increasing radius. Regardless, | |
angle will increase linearly. | |
For transforms that do lie on the unit circle, accuracy is better when | |
using `ZoomFFT`, since any numerical error in `w` is | |
accumulated for long data lengths, drifting away from the unit circle. | |
The chirp z-transform can be faster than an equivalent FFT with | |
zero padding. Try it with your own array sizes to see. | |
However, the chirp z-transform is considerably less precise than the | |
equivalent zero-padded FFT. | |
As this CZT is implemented using the Bluestein algorithm, it can compute | |
large prime-length Fourier transforms in O(N log N) time, rather than the | |
O(N**2) time required by the direct DFT calculation. (`scipy.fft` also | |
uses Bluestein's algorithm'.) | |
(The name "chirp z-transform" comes from the use of a chirp in the | |
Bluestein algorithm. It does not decompose signals into chirps, like | |
other transforms with "chirp" in the name.) | |
References | |
---------- | |
.. [1] Leo I. Bluestein, "A linear filtering approach to the computation | |
of the discrete Fourier transform," Northeast Electronics Research | |
and Engineering Meeting Record 10, 218-219 (1968). | |
.. [2] Rabiner, Schafer, and Rader, "The chirp z-transform algorithm and | |
its application," Bell Syst. Tech. J. 48, 1249-1292 (1969). | |
Examples | |
-------- | |
Compute multiple prime-length FFTs: | |
>>> from scipy.signal import CZT | |
>>> import numpy as np | |
>>> a = np.random.rand(7) | |
>>> b = np.random.rand(7) | |
>>> c = np.random.rand(7) | |
>>> czt_7 = CZT(n=7) | |
>>> A = czt_7(a) | |
>>> B = czt_7(b) | |
>>> C = czt_7(c) | |
Display the points at which the FFT is calculated: | |
>>> czt_7.points() | |
array([ 1.00000000+0.j , 0.62348980+0.78183148j, | |
-0.22252093+0.97492791j, -0.90096887+0.43388374j, | |
-0.90096887-0.43388374j, -0.22252093-0.97492791j, | |
0.62348980-0.78183148j]) | |
>>> import matplotlib.pyplot as plt | |
>>> plt.plot(czt_7.points().real, czt_7.points().imag, 'o') | |
>>> plt.gca().add_patch(plt.Circle((0,0), radius=1, fill=False, alpha=.3)) | |
>>> plt.axis('equal') | |
>>> plt.show() | |
""" | |
def __init__(self, n, m=None, w=None, a=1+0j): | |
m = _validate_sizes(n, m) | |
k = arange(max(m, n), dtype=np.min_scalar_type(-max(m, n)**2)) | |
if w is None: | |
# Nothing specified, default to FFT-like | |
w = cmath.exp(-2j*pi/m) | |
wk2 = np.exp(-(1j * pi * ((k**2) % (2*m))) / m) | |
else: | |
# w specified | |
wk2 = w**(k**2/2.) | |
a = 1.0 * a # at least float | |
self.w, self.a = w, a | |
self.m, self.n = m, n | |
nfft = next_fast_len(n + m - 1) | |
self._Awk2 = a**-k[:n] * wk2[:n] | |
self._nfft = nfft | |
self._Fwk2 = fft(1/np.hstack((wk2[n-1:0:-1], wk2[:m])), nfft) | |
self._wk2 = wk2[:m] | |
self._yidx = slice(n-1, n+m-1) | |
def __call__(self, x, *, axis=-1): | |
""" | |
Calculate the chirp z-transform of a signal. | |
Parameters | |
---------- | |
x : array | |
The signal to transform. | |
axis : int, optional | |
Axis over which to compute the FFT. If not given, the last axis is | |
used. | |
Returns | |
------- | |
out : ndarray | |
An array of the same dimensions as `x`, but with the length of the | |
transformed axis set to `m`. | |
""" | |
x = np.asarray(x) | |
if x.shape[axis] != self.n: | |
raise ValueError(f"CZT defined for length {self.n}, not " | |
f"{x.shape[axis]}") | |
# Calculate transpose coordinates, to allow operation on any given axis | |
trnsp = np.arange(x.ndim) | |
trnsp[[axis, -1]] = [-1, axis] | |
x = x.transpose(*trnsp) | |
y = ifft(self._Fwk2 * fft(x*self._Awk2, self._nfft)) | |
y = y[..., self._yidx] * self._wk2 | |
return y.transpose(*trnsp) | |
def points(self): | |
""" | |
Return the points at which the chirp z-transform is computed. | |
""" | |
return czt_points(self.m, self.w, self.a) | |
class ZoomFFT(CZT): | |
""" | |
Create a callable zoom FFT transform function. | |
This is a specialization of the chirp z-transform (`CZT`) for a set of | |
equally-spaced frequencies around the unit circle, used to calculate a | |
section of the FFT more efficiently than calculating the entire FFT and | |
truncating. | |
Parameters | |
---------- | |
n : int | |
The size of the signal. | |
fn : array_like | |
A length-2 sequence [`f1`, `f2`] giving the frequency range, or a | |
scalar, for which the range [0, `fn`] is assumed. | |
m : int, optional | |
The number of points to evaluate. Default is `n`. | |
fs : float, optional | |
The sampling frequency. If ``fs=10`` represented 10 kHz, for example, | |
then `f1` and `f2` would also be given in kHz. | |
The default sampling frequency is 2, so `f1` and `f2` should be | |
in the range [0, 1] to keep the transform below the Nyquist | |
frequency. | |
endpoint : bool, optional | |
If True, `f2` is the last sample. Otherwise, it is not included. | |
Default is False. | |
Returns | |
------- | |
f : ZoomFFT | |
Callable object ``f(x, axis=-1)`` for computing the zoom FFT on `x`. | |
See Also | |
-------- | |
zoom_fft : Convenience function for calculating a zoom FFT. | |
Notes | |
----- | |
The defaults are chosen such that ``f(x, 2)`` is equivalent to | |
``fft.fft(x)`` and, if ``m > len(x)``, that ``f(x, 2, m)`` is equivalent to | |
``fft.fft(x, m)``. | |
Sampling frequency is 1/dt, the time step between samples in the | |
signal `x`. The unit circle corresponds to frequencies from 0 up | |
to the sampling frequency. The default sampling frequency of 2 | |
means that `f1`, `f2` values up to the Nyquist frequency are in the | |
range [0, 1). For `f1`, `f2` values expressed in radians, a sampling | |
frequency of 2*pi should be used. | |
Remember that a zoom FFT can only interpolate the points of the existing | |
FFT. It cannot help to resolve two separate nearby frequencies. | |
Frequency resolution can only be increased by increasing acquisition | |
time. | |
These functions are implemented using Bluestein's algorithm (as is | |
`scipy.fft`). [2]_ | |
References | |
---------- | |
.. [1] Steve Alan Shilling, "A study of the chirp z-transform and its | |
applications", pg 29 (1970) | |
https://krex.k-state.edu/dspace/bitstream/handle/2097/7844/LD2668R41972S43.pdf | |
.. [2] Leo I. Bluestein, "A linear filtering approach to the computation | |
of the discrete Fourier transform," Northeast Electronics Research | |
and Engineering Meeting Record 10, 218-219 (1968). | |
Examples | |
-------- | |
To plot the transform results use something like the following: | |
>>> import numpy as np | |
>>> from scipy.signal import ZoomFFT | |
>>> t = np.linspace(0, 1, 1021) | |
>>> x = np.cos(2*np.pi*15*t) + np.sin(2*np.pi*17*t) | |
>>> f1, f2 = 5, 27 | |
>>> transform = ZoomFFT(len(x), [f1, f2], len(x), fs=1021) | |
>>> X = transform(x) | |
>>> f = np.linspace(f1, f2, len(x)) | |
>>> import matplotlib.pyplot as plt | |
>>> plt.plot(f, 20*np.log10(np.abs(X))) | |
>>> plt.show() | |
""" | |
def __init__(self, n, fn, m=None, *, fs=2, endpoint=False): | |
m = _validate_sizes(n, m) | |
k = arange(max(m, n), dtype=np.min_scalar_type(-max(m, n)**2)) | |
if np.size(fn) == 2: | |
f1, f2 = fn | |
elif np.size(fn) == 1: | |
f1, f2 = 0.0, fn | |
else: | |
raise ValueError('fn must be a scalar or 2-length sequence') | |
self.f1, self.f2, self.fs = f1, f2, fs | |
if endpoint: | |
scale = ((f2 - f1) * m) / (fs * (m - 1)) | |
else: | |
scale = (f2 - f1) / fs | |
a = cmath.exp(2j * pi * f1/fs) | |
wk2 = np.exp(-(1j * pi * scale * k**2) / m) | |
self.w = cmath.exp(-2j*pi/m * scale) | |
self.a = a | |
self.m, self.n = m, n | |
ak = np.exp(-2j * pi * f1/fs * k[:n]) | |
self._Awk2 = ak * wk2[:n] | |
nfft = next_fast_len(n + m - 1) | |
self._nfft = nfft | |
self._Fwk2 = fft(1/np.hstack((wk2[n-1:0:-1], wk2[:m])), nfft) | |
self._wk2 = wk2[:m] | |
self._yidx = slice(n-1, n+m-1) | |
def czt(x, m=None, w=None, a=1+0j, *, axis=-1): | |
""" | |
Compute the frequency response around a spiral in the Z plane. | |
Parameters | |
---------- | |
x : array | |
The signal to transform. | |
m : int, optional | |
The number of output points desired. Default is the length of the | |
input data. | |
w : complex, optional | |
The ratio between points in each step. This must be precise or the | |
accumulated error will degrade the tail of the output sequence. | |
Defaults to equally spaced points around the entire unit circle. | |
a : complex, optional | |
The starting point in the complex plane. Default is 1+0j. | |
axis : int, optional | |
Axis over which to compute the FFT. If not given, the last axis is | |
used. | |
Returns | |
------- | |
out : ndarray | |
An array of the same dimensions as `x`, but with the length of the | |
transformed axis set to `m`. | |
See Also | |
-------- | |
CZT : Class that creates a callable chirp z-transform function. | |
zoom_fft : Convenience function for partial FFT calculations. | |
Notes | |
----- | |
The defaults are chosen such that ``signal.czt(x)`` is equivalent to | |
``fft.fft(x)`` and, if ``m > len(x)``, that ``signal.czt(x, m)`` is | |
equivalent to ``fft.fft(x, m)``. | |
If the transform needs to be repeated, use `CZT` to construct a | |
specialized transform function which can be reused without | |
recomputing constants. | |
An example application is in system identification, repeatedly evaluating | |
small slices of the z-transform of a system, around where a pole is | |
expected to exist, to refine the estimate of the pole's true location. [1]_ | |
References | |
---------- | |
.. [1] Steve Alan Shilling, "A study of the chirp z-transform and its | |
applications", pg 20 (1970) | |
https://krex.k-state.edu/dspace/bitstream/handle/2097/7844/LD2668R41972S43.pdf | |
Examples | |
-------- | |
Generate a sinusoid: | |
>>> import numpy as np | |
>>> f1, f2, fs = 8, 10, 200 # Hz | |
>>> t = np.linspace(0, 1, fs, endpoint=False) | |
>>> x = np.sin(2*np.pi*t*f2) | |
>>> import matplotlib.pyplot as plt | |
>>> plt.plot(t, x) | |
>>> plt.axis([0, 1, -1.1, 1.1]) | |
>>> plt.show() | |
Its discrete Fourier transform has all of its energy in a single frequency | |
bin: | |
>>> from scipy.fft import rfft, rfftfreq | |
>>> from scipy.signal import czt, czt_points | |
>>> plt.plot(rfftfreq(fs, 1/fs), abs(rfft(x))) | |
>>> plt.margins(0, 0.1) | |
>>> plt.show() | |
However, if the sinusoid is logarithmically-decaying: | |
>>> x = np.exp(-t*f1) * np.sin(2*np.pi*t*f2) | |
>>> plt.plot(t, x) | |
>>> plt.axis([0, 1, -1.1, 1.1]) | |
>>> plt.show() | |
the DFT will have spectral leakage: | |
>>> plt.plot(rfftfreq(fs, 1/fs), abs(rfft(x))) | |
>>> plt.margins(0, 0.1) | |
>>> plt.show() | |
While the DFT always samples the z-transform around the unit circle, the | |
chirp z-transform allows us to sample the Z-transform along any | |
logarithmic spiral, such as a circle with radius smaller than unity: | |
>>> M = fs // 2 # Just positive frequencies, like rfft | |
>>> a = np.exp(-f1/fs) # Starting point of the circle, radius < 1 | |
>>> w = np.exp(-1j*np.pi/M) # "Step size" of circle | |
>>> points = czt_points(M + 1, w, a) # M + 1 to include Nyquist | |
>>> plt.plot(points.real, points.imag, '.') | |
>>> plt.gca().add_patch(plt.Circle((0,0), radius=1, fill=False, alpha=.3)) | |
>>> plt.axis('equal'); plt.axis([-1.05, 1.05, -0.05, 1.05]) | |
>>> plt.show() | |
With the correct radius, this transforms the decaying sinusoid (and others | |
with the same decay rate) without spectral leakage: | |
>>> z_vals = czt(x, M + 1, w, a) # Include Nyquist for comparison to rfft | |
>>> freqs = np.angle(points)*fs/(2*np.pi) # angle = omega, radius = sigma | |
>>> plt.plot(freqs, abs(z_vals)) | |
>>> plt.margins(0, 0.1) | |
>>> plt.show() | |
""" | |
x = np.asarray(x) | |
transform = CZT(x.shape[axis], m=m, w=w, a=a) | |
return transform(x, axis=axis) | |
def zoom_fft(x, fn, m=None, *, fs=2, endpoint=False, axis=-1): | |
""" | |
Compute the DFT of `x` only for frequencies in range `fn`. | |
Parameters | |
---------- | |
x : array | |
The signal to transform. | |
fn : array_like | |
A length-2 sequence [`f1`, `f2`] giving the frequency range, or a | |
scalar, for which the range [0, `fn`] is assumed. | |
m : int, optional | |
The number of points to evaluate. The default is the length of `x`. | |
fs : float, optional | |
The sampling frequency. If ``fs=10`` represented 10 kHz, for example, | |
then `f1` and `f2` would also be given in kHz. | |
The default sampling frequency is 2, so `f1` and `f2` should be | |
in the range [0, 1] to keep the transform below the Nyquist | |
frequency. | |
endpoint : bool, optional | |
If True, `f2` is the last sample. Otherwise, it is not included. | |
Default is False. | |
axis : int, optional | |
Axis over which to compute the FFT. If not given, the last axis is | |
used. | |
Returns | |
------- | |
out : ndarray | |
The transformed signal. The Fourier transform will be calculated | |
at the points f1, f1+df, f1+2df, ..., f2, where df=(f2-f1)/m. | |
See Also | |
-------- | |
ZoomFFT : Class that creates a callable partial FFT function. | |
Notes | |
----- | |
The defaults are chosen such that ``signal.zoom_fft(x, 2)`` is equivalent | |
to ``fft.fft(x)`` and, if ``m > len(x)``, that ``signal.zoom_fft(x, 2, m)`` | |
is equivalent to ``fft.fft(x, m)``. | |
To graph the magnitude of the resulting transform, use:: | |
plot(linspace(f1, f2, m, endpoint=False), abs(zoom_fft(x, [f1, f2], m))) | |
If the transform needs to be repeated, use `ZoomFFT` to construct | |
a specialized transform function which can be reused without | |
recomputing constants. | |
Examples | |
-------- | |
To plot the transform results use something like the following: | |
>>> import numpy as np | |
>>> from scipy.signal import zoom_fft | |
>>> t = np.linspace(0, 1, 1021) | |
>>> x = np.cos(2*np.pi*15*t) + np.sin(2*np.pi*17*t) | |
>>> f1, f2 = 5, 27 | |
>>> X = zoom_fft(x, [f1, f2], len(x), fs=1021) | |
>>> f = np.linspace(f1, f2, len(x)) | |
>>> import matplotlib.pyplot as plt | |
>>> plt.plot(f, 20*np.log10(np.abs(X))) | |
>>> plt.show() | |
""" | |
x = np.asarray(x) | |
transform = ZoomFFT(x.shape[axis], fn, m=m, fs=fs, endpoint=endpoint) | |
return transform(x, axis=axis) | |