spectral coherence between several time series

5 vues (au cours des 30 derniers jours)
Richard
Richard le 30 Juil 2012
I need some advice regarding the spectral coherence of several signals. Consider the following example:
t = 1:365;
A = 1;
f = 24;
fs = 1/f;
y = A.*sin(2.*pi.*fs.*t);
Data = y + rand(1,length(t));
depth = 1:9;
for i = 1:10;
data(i,:) = Data+rand(1,length(t));
% spectral analysis
[Pxx(i,:),F(i,:)] = periodogram(data(i,:),rectwin(length(data(i,:))),length(data(i,:)),1);
end
figure(1);
subplot(2,1,1);
plot(F(1,:),10.*log10(Pxx(1,:)));
subplot(2,1,2);
pcolor(F(2:end,:),depth,Pxx(2:end,:));shading interp;axis ij
This example shows the spectra for air temperature as subplot(211) and then the spectra for the temperature at each depth in a water column in subplot(212). However, I would like to calculate the coherence in the spectra (if this makes sense), showing that the coherence between air temperature and water temperature decreases with depth in the water column. Can anyone suggest a method for this? Or any advice on this matter.

Réponse acceptée

Wayne King
Wayne King le 30 Juil 2012
I'll assume you really want to add Gaussian noise and not uniform noise to the data.
y = A.*sin(2*pi*1/T*t);
Data1 = y + randn(1,length(t));
Data2 = y+randn(1,length(t));
[Cxy,W] = mscohere(Data1,Data2,hamming(96),48,96,1);
plot(W,Cxy);

Plus de réponses (1)

Wayne King
Wayne King le 30 Juil 2012
You want to use mscohere.m to compute the magnitude squared coherence between two time series
  1 commentaire
Richard
Richard le 30 Juil 2012
could you provide an example of the most appropriate way of using mscohere for the example shown?

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