LTPDA Toolbox | contents | ![]() ![]() |
Multivariate power spectral density on a logarithmic scale can be performed by the LPSD algorithm, which is an application of Welch's averaged, modified periodogram method, cross-spectral density estimates are not evaluated at freqencies which are linear multiples of the minimum frequency resolution 1/T where T is the window lenght, but on a logarithmic scale. The algorithm takes care of calculating the frequencies at which to evaluate the spectral estimate, aiming at minimizing the uncertainty in the estimate itself, and to recalculate a suitable window length for each frequency bin.
ltpda_ltfe estimates the transfer function of time-series
signals, included in the input AOs. Data are windowed prior to the estimation of the spectra, by multiplying
it with a spectral window object, and can be detrended by polinomial of time in order to reduce the impact
of the border discontinuities. Detrending is performed on each individual window.
Syntaxis
b = ltpda_ltfe(a1,a2,a3,...,pl)
a1, a2, a3, ... are AOs containing the input time series to be evaluated. They need to be in a number N >= 2. b includes the NXN output objects. The parameter list pl includes the following parameters:
If the user doesn't specify the value of a given parameter, the default value is used. The function makes transfer functions estimatesbetween all input AOs. Therefore, if the input argument list contains N analysis objects, the output a will contain NxN TFE estimates. The diagonal elements will be 1.
Example
Evaluation of the transfer function between two time-series represented by: a low frequency sinewave signal superimposed to white noise, and a low frequency sinewave signal at the same frequency, phase shifted and with different amplitude, superimposed to white noise.
x = ao(plist('waveform','sine wave','f',0.1,'A',1,'nsecs',1000,'fs',10)) + ... ao(plist('waveform','noise','type','normal','nsecs',1000,'fs',10)); y = ao(plist('waveform','sine wave','f',0.1,'A',2,'nsecs',1000,'fs',10,'phi',90)) + ... 4*ao(plist('waveform','noise','type','normal','nsecs',1000,'fs',10)); z = ltpda_ltfe(x,y,plist('win',specwin(plist('name','BH92')))); iplot(z(1,2)); iplot(z(2,1));
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Log-scale cross coherence density estimates | Fitting Algorithms | ![]() |
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