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741 lines
24 KiB
Python
741 lines
24 KiB
Python
'''
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CovData1D
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---------
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data : Covariance function values. Size [ny nx nt], all singleton dim. removed.
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args : Lag of first space dimension, length nx.
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h : Water depth.
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tr : Transformation function.
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type : 'enc', 'rot' or 'none'.
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v : Ship speed, if .type='enc'
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phi : Rotation of coordinate system, e.g. direction of ship
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norm : Normalization flag, Logical 1 if autocorrelation, 0 if covariance.
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Rx, ... ,Rtttt : Obvious derivatives of .R.
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note : Memorandum string.
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date : Date and time of creation or change.
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'''
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from __future__ import division, absolute_import
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import warnings
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import numpy as np
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from numpy import (zeros, ones, sqrt, inf, where, nan,
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atleast_1d, hstack, r_, linspace, flatnonzero, size,
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isnan, finfo, diag, ceil, random, pi)
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from numpy.fft import fft
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from numpy.random import randn
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import scipy.interpolate as interpolate
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from scipy.linalg import toeplitz, lstsq
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from scipy import sparse
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from pylab import stineman_interp
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from ..containers import PlotData
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from ..misc import sub_dict_select, nextpow2 # , JITImport
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from .. import spectrum as _wafospec
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from scipy.sparse.linalg.dsolve.linsolve import spsolve
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from scipy.sparse.base import issparse
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from scipy.signal.windows import parzen
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# _wafospec = JITImport('wafo.spectrum')
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__all__ = ['CovData1D']
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def _set_seed(iseed):
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if iseed is not None:
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try:
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random.set_state(iseed)
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except Exception:
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random.seed(iseed)
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def rndnormnd(mean, cov, cases=1):
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'''
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Random vectors from a multivariate Normal distribution
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Parameters
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----------
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mean, cov : array-like
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mean and covariance, respectively.
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cases : scalar integer
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number of sample vectors
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Returns
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-------
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r : matrix of random numbers from the multivariate normal
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distribution with the given mean and covariance matrix.
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The covariance must be a symmetric, semi-positive definite matrix with
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shape equal to the size of the mean.
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Example
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-------
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>>> mu = [0, 5]
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>>> S = [[1, 0.45], [0.45, 0.25]]
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>>> r = rndnormnd(mu, S, 1)
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plot(r(:,1),r(:,2),'.')
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>>> d = 40
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>>> rho = 2 * np.random.rand(1,d)-1
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>>> mu = zeros(d)
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>>> S = (np.dot(rho.T, rho)-diag(rho.ravel()**2))+np.eye(d)
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>>> r = rndnormnd(mu, S, 100)
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See also
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--------
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np.random.multivariate_normal
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'''
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return np.random.multivariate_normal(mean, cov, cases)
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class CovData1D(PlotData):
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""" Container class for 1D covariance data objects in WAFO
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Member variables
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----------------
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data : array_like
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args : vector for 1D, list of vectors for 2D, 3D, ...
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type : string
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spectrum type, one of 'freq', 'k1d', 'enc' (default 'freq')
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lagtype : letter
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lag type, one of: 'x', 'y' or 't' (default 't')
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Examples
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--------
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>>> import numpy as np
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>>> import wafo.spectrum as sp
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>>> Sj = sp.models.Jonswap(Hm0=3,Tp=7)
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>>> w = np.linspace(0,4,256)
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>>> S = sp.SpecData1D(Sj(w),w) #Make spectrum object from numerical values
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See also
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--------
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PlotData
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CovData
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"""
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def __init__(self, *args, **kwds):
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super(CovData1D, self).__init__(*args, **kwds)
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self.name = 'WAFO Covariance Object'
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self.type = 'time'
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self.lagtype = 't'
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self.h = inf
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self.tr = None
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self.phi = 0.
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self.v = 0.
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self.norm = 0
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somekeys = ['phi', 'name', 'h', 'tr', 'lagtype', 'v', 'type', 'norm']
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self.__dict__.update(sub_dict_select(kwds, somekeys))
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self.setlabels()
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def setlabels(self):
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''' Set automatic title, x-,y- and z- labels
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based on type,
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'''
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N = len(self.type)
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if N == 0:
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raise ValueError(
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'Object does not appear to be initialized, it is empty!')
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labels = ['', 'ACF', '']
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if self.lagtype.startswith('t'):
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labels[0] = 'Lag [s]'
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else:
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labels[0] = 'Lag [m]'
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if self.norm:
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title = 'Auto Correlation Function '
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labels[0] = labels[0].split('[')[0]
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else:
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title = 'Auto Covariance Function '
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self.labels.title = title
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self.labels.xlab = labels[0]
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self.labels.ylab = labels[1]
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self.labels.zlab = labels[2]
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def tospecdata(self, rate=None, method='fft', nugget=0.0, trunc=1e-5,
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fast=True):
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'''
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Computes spectral density from the auto covariance function
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Parameters
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----------
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rate = scalar, int
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1,2,4,8...2^r, interpolation rate for f (default 1)
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method : string
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interpolation method 'stineman', 'linear', 'cubic', 'fft'
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nugget : scalar, real
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nugget effect to ensure that round off errors do not result in
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negative spectral estimates. Good choice might be 10^-12.
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trunc : scalar, real
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truncates all spectral values where spec/max(spec) < trunc
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0 <= trunc <1 This is to ensure that high frequency
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noise is not added to the spectrum. (default 1e-5)
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fast : bool
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if True : zero-pad to obtain power of 2 length ACF (default)
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otherwise no zero-padding of ACF, slower but more accurate.
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Returns
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--------
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spec : SpecData1D object
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spectral density
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NB! This routine requires that the covariance is evenly spaced
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starting from zero lag. Currently only capable of 1D matrices.
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Example:
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>>> import wafo.spectrum.models as sm
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>>> import numpy as np
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>>> import scipy.signal as st
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>>> import pylab
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>>> L = 129
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>>> t = np.linspace(0,75,L)
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>>> R = np.zeros(L)
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>>> win = st.parzen(41)
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>>> R[0:21] = win[20:41]
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>>> R0 = CovData1D(R,t)
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>>> S0 = R0.tospecdata()
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>>> Sj = sm.Jonswap()
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>>> spec = Sj.tospecdata()
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>>> R2 = spec.tocovdata()
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>>> S1 = R2.tospecdata()
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>>> abs(S1.data-spec.data).max() < 1e-4
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True
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S1.plot('r-')
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spec.plot('b:')
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pylab.show()
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See also
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--------
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spec2cov
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datastructures
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'''
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dt = self.sampling_period()
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# dt = time-step between data points.
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acf, unused_ti = atleast_1d(self.data, self.args)
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if self.lagtype in 't':
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spectype = 'freq'
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ftype = 'w'
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else:
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spectype = 'k1d'
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ftype = 'k'
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if rate is None:
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rate = 1 # interpolation rate
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else:
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rate = 2 ** nextpow2(rate) # make sure rate is a power of 2
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# add a nugget effect to ensure that round off errors
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# do not result in negative spectral estimates
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acf[0] = acf[0] + nugget
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n = acf.size
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# embedding a circulant vector and Fourier transform
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nfft = 2 ** nextpow2(2 * n - 2) if fast else 2 * n - 2
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if method == 'fft':
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nfft *= rate
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nf = int(nfft // 2) # number of frequencies
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acf = r_[acf, zeros(nfft - 2 * n + 2), acf[n - 2:0:-1]]
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r_per = (fft(acf, nfft).real).clip(0) # periodogram
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r_per_max = r_per.max()
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r_per = where(r_per < trunc * r_per_max, 0, r_per)
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spec = abs(r_per[0:(nf + 1)]) * dt / pi
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w = linspace(0, pi / dt, nf + 1)
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spec_out = _wafospec.SpecData1D(spec, w, type=spectype, freqtype=ftype)
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spec_out.tr = self.tr
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spec_out.h = self.h
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spec_out.norm = self.norm
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if method != 'fft' and rate > 1:
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spec_out.args = linspace(0, pi / dt, nf * rate)
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if method == 'stineman':
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spec_out.data = stineman_interp(spec_out.args, w, spec)
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else:
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intfun = interpolate.interp1d(w, spec, kind=method)
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spec_out.data = intfun(spec_out.args)
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spec_out.data = spec_out.data.clip(0) # clip negative values to 0
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return spec_out
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def sampling_period(self):
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'''
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Returns sampling interval
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Returns
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---------
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dt : scalar
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sampling interval, unit:
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[s] if lagtype=='t'
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[m] otherwise
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'''
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dt1 = self.args[1] - self.args[0]
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n = size(self.args) - 1
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t = self.args[-1] - self.args[0]
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dt = t / n
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if abs(dt - dt1) > 1e-10:
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warnings.warn('Data is not uniformly sampled!')
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return dt
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def _is_valid_acf(self):
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if self.data.argmax() != 0:
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raise ValueError('ACF does not have a maximum at zero lag')
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def sim(self, ns=None, cases=1, dt=None, iseed=None, derivative=False):
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'''
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Simulates a Gaussian process and its derivative from ACF
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Parameters
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----------
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ns : scalar
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number of simulated points. (default length(spec)-1=n-1).
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If ns>n-1 it is assummed that R(k)=0 for all k>n-1
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cases : scalar
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number of replicates (default=1)
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dt : scalar
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step in grid (default dt is defined by the Nyquist freq)
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iseed : int or state
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starting state/seed number for the random number generator
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(default none is set)
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derivative : bool
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if true : return derivative of simulated signal as well
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otherwise
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Returns
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-------
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xs = a cases+1 column matrix ( t,X1(t) X2(t) ...).
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xsder = a cases+1 column matrix ( t,X1'(t) X2'(t) ...).
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Details
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-------
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Performs a fast and exact simulation of stationary zero mean
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Gaussian process through circulant embedding of the covariance matrix.
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If the ACF has a non-empty field .tr, then the transformation is
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applied to the simulated data, the result is a simulation of a
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transformed Gaussian process.
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Note: The simulation may give high frequency ripple when used with a
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small dt.
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Example:
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>>> import wafo.spectrum.models as sm
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>>> Sj = sm.Jonswap()
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>>> spec = Sj.tospecdata() #Make spec
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>>> R = spec.tocovdata()
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>>> x = R.sim(ns=1000,dt=0.2)
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See also
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--------
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spec2sdat, gaus2dat
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Reference
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-----------
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C.R Dietrich and G. N. Newsam (1997)
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"Fast and exact simulation of stationary
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Gaussian process through circulant embedding
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of the Covariance matrix"
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SIAM J. SCI. COMPT. Vol 18, No 4, pp. 1088-1107
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'''
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# TODO fix it, it does not work
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# Add a nugget effect to ensure that round off errors
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# do not result in negative spectral estimates
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nugget = 0 # 10**-12
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_set_seed(iseed)
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self._is_valid_acf()
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acf = self.data.ravel()
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n = acf.size
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acf.shape = (n, 1)
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dt = self.sampling_period()
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x = zeros((ns, cases + 1))
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if derivative:
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xder = x.copy()
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# add a nugget effect to ensure that round off errors
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# do not result in negative spectral estimates
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acf[0] = acf[0] + nugget
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# Fast and exact simulation of simulation of stationary
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# Gaussian process throug circulant embedding of the
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# Covariance matrix
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floatinfo = finfo(float)
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if (abs(acf[-1]) > floatinfo.eps): # assuming acf(n+1)==0
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m2 = 2 * n - 1
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nfft = 2 ** nextpow2(max(m2, 2 * ns))
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acf = r_[acf, zeros((nfft - m2, 1)), acf[-1:0:-1, :]]
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# warnings,warn('I am now assuming that ACF(k)=0 for k>MAXLAG.')
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else: # ACF(n)==0
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m2 = 2 * n - 2
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nfft = 2 ** nextpow2(max(m2, 2 * ns))
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acf = r_[acf, zeros((nfft - m2, 1)), acf[n - 1:1:-1, :]]
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# m2=2*n-2
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spec = fft(acf, nfft, axis=0).real # periodogram
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I = spec.argmax()
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k = flatnonzero(spec < 0)
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if k.size > 0:
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_msg = '''
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Not able to construct a nonnegative circulant vector from ACF.
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Apply parzen windowfunction to the ACF in order to avoid this.
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The returned result is now only an approximation.'''
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# truncating negative values to zero to ensure that
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# that this noise is not added to the simulated timeseries
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spec[k] = 0.
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ix = flatnonzero(k > 2 * I)
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if ix.size > 0:
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# truncating all oscillating values above 2 times the peak
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# frequency to zero to ensure that
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# that high frequency noise is not added to
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# the simulated timeseries.
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ix0 = k[ix[0]]
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spec[ix0:-ix0] = 0.0
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trunc = 1e-5
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max_spec = spec[I]
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k = flatnonzero(spec[I:-I] < max_spec * trunc)
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if k.size > 0:
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spec[k + I] = 0.
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# truncating small values to zero to ensure that
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# that high frequency noise is not added to
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# the simulated timeseries
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cases1 = int(cases / 2)
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cases2 = int(ceil(cases / 2))
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# Generate standard normal random numbers for the simulations
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# randn = np.random.randn
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epsi = randn(nfft, cases2) + 1j * randn(nfft, cases2)
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sqrt_spec = sqrt(spec / (nfft)) # sqrt(spec(wn)*dw )
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ephat = epsi * sqrt_spec # [:,np.newaxis]
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y = fft(ephat, nfft, axis=0)
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x[:, 1:cases + 1] = hstack((y[2:ns + 2, 0:cases2].real,
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y[2:ns + 2, 0:cases1].imag))
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x[:, 0] = linspace(0, (ns - 1) * dt, ns) # (0:dt:(dt*(np-1)))'
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if derivative:
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sqrt_spec = sqrt_spec * \
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r_[0:(nfft / 2 + 1), -(nfft / 2 - 1):0] * 2 * pi / nfft / dt
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ephat = epsi * sqrt_spec # [:,newaxis]
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y = fft(ephat, nfft, axis=0)
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xder[:, 1:(cases + 1)] = hstack((y[2:ns + 2, 0:cases2].imag -
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y[2:ns + 2, 0:cases1].real))
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xder[:, 0] = x[:, 0]
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|
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if self.tr is not None:
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print(' Transforming data.')
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g = self.tr
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if derivative:
|
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for ix in range(cases):
|
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tmp = g.gauss2dat(x[:, ix + 1], xder[:, ix + 1])
|
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x[:, ix + 1] = tmp[0]
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xder[:, ix + 1] = tmp[1]
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else:
|
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for ix in range(cases):
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x[:, ix + 1] = g.gauss2dat(x[:, ix + 1])
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|
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if derivative:
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return x, xder
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else:
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return x
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|
|
def _get_lag_where_acf_is_almost_zero(self):
|
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acf = self.data.ravel()
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r0 = acf[0]
|
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n = len(acf)
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sigma = sqrt(r_[0, r0 ** 2,
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r0 ** 2 + 2 * np.cumsum(acf[1:n - 1] ** 2)] / n)
|
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k = flatnonzero(np.abs(acf) > 0.1 * sigma)
|
|
if k.size > 0:
|
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lag = min(k.max() + 3, n)
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return lag
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return n
|
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|
|
def _get_acf(self, smooth=False):
|
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self._is_valid_acf()
|
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acf = atleast_1d(self.data).ravel()
|
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n = self._get_lag_where_acf_is_almost_zero()
|
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if smooth:
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rwin = parzen(2 * n + 1)
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return acf[:n] * rwin[n:2 * n]
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else:
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return acf[:n]
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|
|
@staticmethod
|
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def _split_cov(sigma, i_known, i_unknown):
|
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'''
|
|
Split covariance matrix between known/unknown observations
|
|
|
|
Returns
|
|
-------
|
|
soo covariance between known observations
|
|
s1o = covariance between known and unknown obs
|
|
s11 = covariance between unknown observations
|
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'''
|
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soo, so1 = sigma[i_known][:, i_known], sigma[i_known][:, i_unknown]
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s11 = sigma[i_unknown][:, i_unknown]
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return soo, so1, s11
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|
|
@staticmethod
|
|
def _update_window(idx, i_unknown, num_x, num_acf,
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overlap, nw, num_restored):
|
|
num_sig = len(idx)
|
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start_max = num_x - num_sig
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if (nw == 0) and (num_restored < len(i_unknown)):
|
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# move to the next missing data
|
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start_ix = min(i_unknown[num_restored + 1] - overlap, start_max)
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else:
|
|
start_ix = min(idx[0] + num_acf, start_max)
|
|
|
|
return idx + start_ix - idx[0]
|
|
|
|
def simcond(self, xo, method='approx', i_unknown=None):
|
|
"""
|
|
Simulate values conditionally on observed known values
|
|
|
|
Parameters
|
|
----------
|
|
x : vector
|
|
timeseries including missing data.
|
|
(missing data must be NaN if i_unknown is not given)
|
|
Assumption: The covariance of x is equal to self and have the
|
|
same sample period.
|
|
method : string
|
|
defining method used in the conditional simulation. Options are:
|
|
'approximate': Condition only on the closest points. Quite fast
|
|
'exact' : Exact simulation. Slow for large data sets, may not
|
|
return any result due to near singularity of the covariance
|
|
matrix.
|
|
i_unknown : integers
|
|
indices to spurious or missing data in x
|
|
|
|
Returns
|
|
-------
|
|
sample : ndarray
|
|
a random sample of the missing values conditioned on the observed
|
|
data.
|
|
mu, sigma : ndarray
|
|
mean and standard deviation, respectively, of the missing values
|
|
conditioned on the observed data.
|
|
|
|
Notes
|
|
-----
|
|
SIMCOND generates the missing values from x conditioned on the observed
|
|
values assuming x comes from a multivariate Gaussian distribution
|
|
with zero expectation and Auto Covariance function R.
|
|
|
|
See also
|
|
--------
|
|
CovData1D.sim
|
|
TimeSeries.reconstruct,
|
|
rndnormnd
|
|
|
|
Reference
|
|
---------
|
|
Brodtkorb, P, Myrhaug, D, and Rue, H (2001)
|
|
"Joint distribution of wave height and wave crest velocity from
|
|
reconstructed data with application to ringing"
|
|
Int. Journal of Offshore and Polar Engineering, Vol 11, No. 1,
|
|
pp 23--32
|
|
|
|
Brodtkorb, P, Myrhaug, D, and Rue, H (1999)
|
|
"Joint distribution of wave height and wave crest velocity from
|
|
reconstructed data"
|
|
in Proceedings of 9th ISOPE Conference, Vol III, pp 66-73
|
|
"""
|
|
x = atleast_1d(xo).ravel()
|
|
acf = self._get_acf()
|
|
|
|
num_x = len(x)
|
|
num_acf = len(acf)
|
|
|
|
if i_unknown is not None:
|
|
x[i_unknown] = nan
|
|
i_unknown = flatnonzero(isnan(x))
|
|
num_unknown = len(i_unknown)
|
|
|
|
mu1o = zeros((num_unknown,))
|
|
mu1o_std = zeros((num_unknown,))
|
|
sample = zeros((num_unknown,))
|
|
if num_unknown == 0:
|
|
warnings.warn('No missing data, no point to continue.')
|
|
return sample, mu1o, mu1o_std
|
|
if num_unknown == num_x:
|
|
warnings.warn('All data missing, returning sample from' +
|
|
' the apriori distribution.')
|
|
mu1o_std = ones(num_unknown) * sqrt(acf[0])
|
|
return self.sim(ns=num_unknown, cases=1)[:, 1], mu1o, mu1o_std
|
|
|
|
i_known = flatnonzero(1 - isnan(x))
|
|
|
|
if method.startswith('exac'):
|
|
# exact but slow. It also may not return any result
|
|
if num_acf > 0.3 * num_x:
|
|
sigma = toeplitz(hstack((acf, zeros(num_x - num_acf))))
|
|
else:
|
|
acf[0] = acf[0] * 1.00001
|
|
sigma = sptoeplitz(hstack((acf, zeros(num_x - num_acf))))
|
|
soo, so1, s11 = self._split_cov(sigma, i_known, i_unknown)
|
|
|
|
if issparse(sigma):
|
|
so1 = so1.todense()
|
|
s11 = s11.todense()
|
|
s1o_sooinv = spsolve(soo + soo.T, 2 * so1).T
|
|
else:
|
|
sooinv_so1, _res, _rank, _s = lstsq(soo + soo.T, 2 * so1,
|
|
cond=1e-4)
|
|
s1o_sooinv = sooinv_so1.T
|
|
mu1o = s1o_sooinv.dot(x[i_known])
|
|
sigma1o = s11 - s1o_sooinv.dot(so1)
|
|
if (diag(sigma1o) < 0).any():
|
|
raise ValueError('Failed to converge to a solution')
|
|
|
|
mu1o_std = sqrt(diag(sigma1o))
|
|
sample[:] = rndnormnd(mu1o, sigma1o, cases=1).ravel()
|
|
|
|
elif method.startswith('appr'):
|
|
# approximating by only condition on the closest points
|
|
|
|
num_sig = min(2 * num_acf, num_x)
|
|
|
|
sigma = toeplitz(hstack((acf, zeros(num_sig - num_acf))))
|
|
overlap = int(num_sig / 4)
|
|
# indices to the points used
|
|
idx = r_[0:num_sig] + max(0, min(i_unknown[0] - overlap,
|
|
num_x - num_sig))
|
|
mask_unknown = zeros(num_x, dtype=bool)
|
|
# temporary storage of indices to missing points
|
|
mask_unknown[i_unknown] = True
|
|
t_unknown = where(mask_unknown[idx])[0]
|
|
t_known = where(1 - mask_unknown[idx])[0]
|
|
ns = len(t_unknown) # number of missing data in the interval
|
|
|
|
num_restored = 0 # number of previously simulated points
|
|
x2 = x.copy()
|
|
|
|
while ns > 0:
|
|
soo, so1, s11 = self._split_cov(sigma, t_known, t_unknown)
|
|
if issparse(soo):
|
|
so1 = so1.todense()
|
|
s11 = s11.todense()
|
|
s1o_sooinv = spsolve(soo + soo.T, 2 * so1).T
|
|
else:
|
|
sooinv_so1, _res, _rank, _s = lstsq(soo + soo.T, 2 * so1,
|
|
cond=1e-4)
|
|
s1o_sooinv = sooinv_so1.T
|
|
sigma1o = s11 - s1o_sooinv.dot(so1)
|
|
if (diag(sigma1o) < 0).any():
|
|
raise ValueError('Failed to converge to a solution')
|
|
|
|
ix = slice((num_restored), (num_restored + ns))
|
|
# standard deviation of the expected surface
|
|
mu1o_std[ix] = np.maximum(mu1o_std[ix], sqrt(diag(sigma1o)))
|
|
|
|
# expected surface conditioned on the closest known
|
|
# observations from x
|
|
mu1o[ix] = s1o_sooinv.dot(x2[idx[t_known]])
|
|
# sample conditioned on the known observations from x
|
|
mu1os = s1o_sooinv.dot(x[idx[t_known]])
|
|
sample[ix] = rndnormnd(mu1os, sigma1o, cases=1)
|
|
if idx[-1] == num_x - 1:
|
|
ns = 0 # no more points to simulate
|
|
else:
|
|
x2[idx[t_unknown]] = mu1o[ix] # expected surface
|
|
x[idx[t_unknown]] = sample[ix] # sampled surface
|
|
# removing indices to data which has been simulated
|
|
mask_unknown[idx[:-overlap]] = False
|
|
# data we want to simulate once more
|
|
nw = sum(mask_unknown[idx[-overlap:]] is True)
|
|
num_restored += ns - nw # update # points simulated so far
|
|
|
|
idx = self._update_window(idx, i_unknown, num_x, num_acf,
|
|
overlap, nw, num_restored)
|
|
|
|
# find new interval with missing data
|
|
t_unknown = flatnonzero(mask_unknown[idx])
|
|
t_known = flatnonzero(1 - mask_unknown[idx])
|
|
ns = len(t_unknown) # # missing data in the interval
|
|
return sample, mu1o, mu1o_std
|
|
|
|
|
|
def sptoeplitz(x):
|
|
k = flatnonzero(x)
|
|
n = len(x)
|
|
spdiags = sparse.dia_matrix
|
|
data = x[k].reshape(-1, 1).repeat(n, axis=-1)
|
|
offsets = k
|
|
y = spdiags((data, offsets), shape=(n, n))
|
|
if k[0] == 0:
|
|
offsets = k[1::]
|
|
data = data[1::, :]
|
|
t = y + spdiags((data, -offsets), shape=(n, n))
|
|
return t.tocsr()
|
|
|
|
|
|
def _test_covdata():
|
|
import wafo.data
|
|
x = wafo.data.sea()
|
|
ts = wafo.objects.mat2timeseries(x)
|
|
rf = ts.tocovdata(lag=150)
|
|
rf.plot()
|
|
|
|
|
|
def main():
|
|
import wafo.spectrum.models as sm
|
|
import matplotlib
|
|
matplotlib.interactive(True)
|
|
Sj = sm.Jonswap()
|
|
S = Sj.tospecdata() # Make spec
|
|
S.plot()
|
|
R = S.tocovdata(rate=3)
|
|
R.plot()
|
|
x = R.sim(ns=1024 * 4)
|
|
inds = np.hstack((21 + np.arange(20),
|
|
1000 + np.arange(20),
|
|
1024 * 4 - 21 + np.arange(20)))
|
|
sample, mu1o, mu1o_std = R.simcond(x[:, 1], method='approx',
|
|
i_unknown=inds)
|
|
|
|
import matplotlib.pyplot as plt
|
|
# inds = np.atleast_2d(inds).reshape((-1,1))
|
|
plt.plot(x[:, 1], 'k.', label='observed values')
|
|
plt.plot(inds, mu1o, '*', label='mu1o')
|
|
plt.plot(inds, sample.ravel(), 'r+', label='samples')
|
|
plt.plot(inds, mu1o - 2 * mu1o_std, 'r',
|
|
inds, mu1o + 2 * mu1o_std, 'r', label='2 stdev')
|
|
plt.legend()
|
|
plt.show('hold')
|
|
|
|
|
|
if __name__ == '__main__':
|
|
if False: # True: #
|
|
from wafo.testing import test_docstrings
|
|
test_docstrings(__file__)
|
|
else:
|
|
main()
|