I need to calculate time-evolving power spectral density using Matlab periodogram function
2 visualizaciones (últimos 30 días)
Mostrar comentarios más antiguos
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.
0 comentarios
Respuesta aceptada
Wayne King
el 19 de Mzo. de 2013
Editada: Wayne King
el 19 de Mzo. de 2013
You cannot have a PSD estimate on the same time scale as the original signal. That would mean that you have a PSD estimate based on 1 sample. You must sum over some interval to produce a PSD estimate.
I tried to help you by telling you that you need to create a time vector that essentially takes the midpoints of each time interval. Remember, you time jump between intervals is really the length of your window minus the number of overlapped samples, so it's 30 samples with a sampling frequency of 1000 Hz -- 0.030 sec.
I also told you that buffer() will prepend zeros and append zeros so you need to take those into account.
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
% create a time vector
idxbegin = find(X(:,1) == 0);
numpresteps = length(idxbegin);
idxend = find(X(:,end) == 0);
numpoststeps = length(idxend);
tbegin = -(numpresteps*dt)/2;
tend = t(end)+((numpoststeps*dt))/2;
tvec = linspace(tbegin,tend,size(Pxx,2));
surf(tvec,F,10*log10(abs(Pxx)),'EdgeColor','none');
axis xy; axis tight; colormap(jet); view(0,90);
xlabel('Time (sec)');
ylabel('Frequency (Hz)');
Más respuestas (2)
Wayne King
el 16 de Mzo. de 2013
Editada: Wayne King
el 16 de Mzo. de 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.
Wayne King
el 18 de Mzo. de 2013
Editada: Wayne King
el 18 de Mzo. de 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)');
Ver también
Categorías
Más información sobre Spectral Estimation en Help Center y File Exchange.
Community Treasure Hunt
Find the treasures in MATLAB Central and discover how the community can help you!
Start Hunting!