Plot autocorrelation and power spectrum

4 views (last 30 days)
Hi..i'm a beginner in using Matlab. I'm currently trying to generate a Gaussian random numbers, then use it as an input to a low pass filter, cut-off frequency 1000Hz. I have the random number generated as: : f = randn(1000,1) * sqrt(2) + 0; I'd like to ask how can i proceed from here to calculate and plot the autocorrelation and power spectrum at input/output of the filter.

Accepted Answer

Wayne King
Wayne King on 15 Dec 2013
If you have the Signal Processing Toolbox, simply use xcorr() and periodogram()
x = sqrt(2)*randn(1000,1);
Numlags = 50;
[xc,lags] = xcorr(x,Numlags,'coeff');
stem(lags(51:end),xc(51:end))
% power spectrum
Fs = 1; % sampling frequency
[Pxx,F] = periodogram(x,[],length(x),Fs);
figure;
plot(F,10*log10(Pxx))
  4 Comments
Wayne King
Wayne King on 16 Dec 2013
You need more information than that. You need to know minimally the sampling frequency.
Aik Hong
Aik Hong on 16 Dec 2013
Oh ok. I've previously designed (in fdatool) the filter as the IIR Butterworth filter, sampling frequency 8000Hz and cutoff frequency 1000Hz. I've exported the filter to workspace.Can you advice me how should i use the random number generated as input to this filter and then plot its output autocorrelation and power spectrum?

Sign in to comment.

More Answers (1)

Wayne King
Wayne King on 16 Dec 2013
It depends on what you have exported. If you exported a filter object -- I'll assume this.
Let Hd be your filter object
x = randn(1000,1); % white noise input 1,000 samples in length
y = filter(Hd,x);
  1 Comment
Aik Hong
Aik Hong on 16 Dec 2013
Thanks a lot. I got my output for autocorrelation and power spectrum like this:

Sign in to comment.

Community Treasure Hunt

Find the treasures in MATLAB Central and discover how the community can help you!

Start Hunting!