DocumentCode :
3860824
Title :
Robust nonlinear system identification using neural-network models
Author :
Songwu Lu;T. Basar
Author_Institution :
Coordinated Sci. Lab., Illinois Univ., Urbana, IL, USA
Volume :
9
Issue :
3
fYear :
1998
Firstpage :
407
Lastpage :
429
Abstract :
We study the problem of identification for nonlinear systems in the presence of unknown driving noise, using both feedforward multilayer neural network and radial basis function network models. Our objective is to resolve the difficulty associated with the persistency of excitation condition inherent to the standard schemes in the neural identification literature. This difficulty is circumvented here by a novel formulation and by using a new class of identification algorithms recently obtained by Didinsky et al. (1995). We present a class of identifiers which secure a good approximant for the system nonlinearity provided that some global optimization technique is used. Subsequently, we address the same problem under a third, worst case L/sup /spl infin// criterion for an RBF modeling. We present a neural-network version of an H/sup /spl infin//-based identification algorithm from Didinsky et al., and show how it leads to satisfaction of a relevant persistency of excitation condition, and thereby to robust identification of the nonlinearity.
Keywords :
"Nonlinear systems","Backpropagation algorithms","Multi-layer neural network","Neural networks","Radial basis function networks","Feedforward neural networks","Noise robustness","Power system modeling","Convergence","Noise measurement"
Journal_Title :
IEEE Transactions on Neural Networks
Publisher :
ieee
ISSN :
1045-9227
Type :
jour
DOI :
10.1109/72.668883
Filename :
668883
Link To Document :
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