I need to calculate time-evolving power spectral density using Matlab periodogram function
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I need to calculate time-evolving power spectral density using Matlab periodogram function based on Welch theory to estimate the PSD of a moving 400-kyr boxcar filter with an overlap of 85%. In all the figures, values have to be plotted at the center of each 400-kyr window over which they are calculated.
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Wayne King
on 16 Mar 2013
Edited: Wayne King
on 16 Mar 2013
If you want to use Welch's method in a time-evolving manner, use buffer() to segment the signal with overlap and obtain Welch estimates on those overlapped segments.
I would caution you against using a boxcar filter, here I'll give you an example with a Hamming window. You can substitute your boxcar filter as needed.
Further, you have not been clear about whether the overlap of 85% applies to both the time-evolving PSD or the overlap in the Welch's estimate, I'll use 50% for the latter.
Fs = 1000;
t = 0:0.001:4-0.001;
x = cos(2*pi*10*t)+randn(size(t));
winsize = 200;
numoverlap = round(0.85*winsize);
win = hamming(200);
X = buffer(x,200,numoverlap);
for nn = 1:size(X,2)
[Pxx(:,nn),F] = pwelch(X(:,nn),win,length(win)/2,length(win),Fs);
end
The columns of Pxx give you the time-varying Welch PSD estimates. You may want to avoid using the last column of Pxx because that is computed on the last column of X, which may contain a lot of zeros.
1 Comment
Biljana basarin
on 17 Mar 2013
Wayne King
on 18 Mar 2013
Edited: Wayne King
on 18 Mar 2013
Just use surf(), you can easily work out a "meaningful" time vector but you have to look at the why buffer() has prepended and appended zeros to get the matrix right.
Fs = 1000;
t = 0:0.001:4-0.001;
x = cos(2*pi*10*t)+randn(size(t));
winsize = 200;
numoverlap = round(0.85*winsize);
win = hamming(200);
X = buffer(x,200,numoverlap);
for nn = 1:size(X,2)
[Pxx(:,nn),F] = pwelch(X(:,nn),win,length(win)/2,length(win),Fs);
end
surf(1:size(Pxx,2),F,10*log10(abs(Pxx)),'EdgeColor','none');
axis xy; axis tight; colormap(jet); view(0,90);
xlabel('Time');
ylabel('Frequency (Hz)');
1 Comment
Biljana basarin
on 18 Mar 2013
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