DocumentCode
1349580
Title
Blind identification of quadratic nonlinear models using neural networks with higher order cumulants
Author
Tan, Hong-Zhou ; Chow, Tommy W S
Author_Institution
Dept. of Electron. Eng., City Univ. of Hong Kong, Kowloon, China
Volume
47
Issue
3
fYear
2000
fDate
6/1/2000 12:00:00 AM
Firstpage
687
Lastpage
696
Abstract
A novel approach to blindly estimate kernels of any discrete- and finite-extent quadratic models in higher order cumulants domain based on artificial neural networks is proposed in this paper. The input signal is assumed an unobservable independently identically, distributed random sequence which is viable for engineering practice. Because of the properties of the third-order cumulant functions, identifiability of the nonlinear model holds, even when the model output measurement is corrupted by a Gaussian random disturbance. The proposed approach enables a nonlinear relationship between model kernels and model output cumulants to be established by means of neural networks. The approximation ability of the neural network with the weights-decoupled extended Kalman filter training algorithm is then used to estimate the model parameters. Theoretical statements and simulation examples together with practical application to the train vibration signals modeling corroborate that the developed methodology is capable of providing a very promising way to identify truncated Volterra models blindly
Keywords
Kalman filters; Volterra equations; higher order statistics; identification; neural nets; nonlinear equations; nonlinear systems; Gaussian random disturbance; approximation ability; blind identification; finite-extent quadratic models; higher order cumulants; kernels estimation; model output measurement; neural networks; quadratic nonlinear models; third-order cumulant functions; truncated Volterra models; unobservable independently identically distributed random sequence; vibration signals modeling; weights-decoupled extended Kalman filter training algorithm; Artificial neural networks; Gaussian noise; Kernel; Neural networks; Noise measurement; Nonlinear systems; Pollution measurement; Random sequences; Signal processing; Statistics;
fLanguage
English
Journal_Title
Industrial Electronics, IEEE Transactions on
Publisher
ieee
ISSN
0278-0046
Type
jour
DOI
10.1109/41.847909
Filename
847909
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