DocumentCode :
1348924
Title :
Closed-loop linear model validation and order estimation using polyspectral analysis
Author :
Zhou, Yi ; Tugnait, Jitendra K.
Author_Institution :
Hekimian Labs. Inc., Rockville, MD, USA
Volume :
48
Issue :
7
fYear :
2000
fDate :
7/1/2000 12:00:00 AM
Firstpage :
1965
Lastpage :
1974
Abstract :
Suppose that we perform closed-loop linear system identification using polyspectral analysis given noisy time-domain input-output measurements. In this setup, it is assumed that various disturbances affecting the system are zero-mean stationary Gaussian, whereas the closed-loop system operates under an external (possibly noisy) non-Gaussian input. The closed-loop system must be stable, but it is allowed to be unstable in the open loop. Various techniques have been proposed for system identification using polyspectral analysis. Having obtained a model, how do we know if the fitted model is “good?” This paper is devoted to the problem of statistical model validation using polyspectral analysis. We propose simple statistical tests based on the estimated polyspectrum (integrated bispectrum and/or integrated trispectrum) of an output error signal or the estimated cross-polyspectrum between the external reference and the output error signal. Model order estimation is performed by repeatedly using the model validation procedure. Computer simulation examples are presented in support of the proposed approaches
Keywords :
closed loop systems; maximum likelihood estimation; optimisation; spectral analysis; statistical analysis; closed-loop linear model validation; closed-loop linear system identification; closed-loop system; computer simulation; estimated cross-polyspectrum; estimated polyspectrum; fitted model; integrated bispectrum; integrated trispectrum; model order estimation; noisy nonGaussian input; noisy time-domain input-output measurements; nonlinear optimization; output error signal; polyspectral analysis; pseudo-maximum likelihood method; statistical model validation; statistical tests; system identification; zero-mean stationary Gaussian disturbances; Computer errors; Context modeling; Gaussian noise; Performance analysis; Performance evaluation; Predictive models; System identification; System testing; Time domain analysis; Transfer functions;
fLanguage :
English
Journal_Title :
Signal Processing, IEEE Transactions on
Publisher :
ieee
ISSN :
1053-587X
Type :
jour
DOI :
10.1109/78.847783
Filename :
847783
Link To Document :
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