LS method in idetification ,control engeeniring

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saeed
saeed on 12 May 2024
Answered: Aastha on 1 Oct 2024
Hi,how are you?I have problem with that code,is about LS method with ARX model in identification,I should use xcorr command for EPS variable to compare it that how much is near to white noise ?
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saeed
saeed on 12 May 2024
Edited: Sam Chak on 12 May 2024
clc, clear, close all, N=100; e=100*randn(1,N); x=1:N; a2=0.5; a1=1; a0=2; y=a2*x.^2+a1*x+a0+e; plot(x,y,'Linewidth',2); phi=ones(N,1); Y=y'; theta_hat=phi./Y; Y_hat=phi.*theta_hat; Eps=Y-Y_hat; V0=Eps'*Eps/2; hold on, plot(x,Y_hat,'LineWidth',2); clear phi theta_hat
saeed
saeed on 12 May 2024
How can I compare Eps with e by xcorr command to know that error is atleast near to white noise

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Answers (1)

Aastha
Aastha on 1 Oct 2024
Hi saeed,
As I understand, you want to compare the error variable Eps" between Y and Y_hat”  with the white noise realization e using the "xcorr" function in MATLAB. This can be done using the following code snippet:
[cross_corr, lags] = xcorr(Eps, e, 'normalized');   
You may refer to the link of MathWorks documentation for further information on “xcorr” function. Here is the link to it:
The "xcorr" function computes the cross correlation between Eps and "e. The "normalised" argument normalizes the sequences so that the autocorrelations at zero lag is equal to 1.
The function returns two variables, first one is lags which contains all the lags at which cross correlation has been computed and the second variable cross_corr contains the corresponding cross correlation values.
You can visualize the cross relation using the "stem" function in MATLAB. The code snippet below illustrates the same:
stem(lags,c);
For more information on “stem” function, you may refer to the documentation link below:
I hope this helps!

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