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Design of asymptotic estimators: an approach based on neural networks and nonlinear programming

Authors :
Alessandri, Angelo
Cervellera, Cristiano
Sanguineti, Marcello
Source :
IEEE Transactions on Neural Networks. Jan, 2007, Vol. 18 Issue 1, p86, 11 p.
Publication Year :
2007

Abstract

A methodology to design state estimators for a class of nonlinear continuous-time dynamic systems that is based on neural networks and nonlinear programming is proposed. The estimator has the structure of a Luenberger observer with a linear gain and a parameterized (in general, nonlinear) function, whose argument is an innovation term representing the difference between the current measurement and its prediction. The problem of the estimator design consists in finding the values of the gain and of the parameters that guarantee the asymptotic stability of the estimation error. Toward this end, if a neural network is used to take on this function, the parameters (i.e., the neural weights) are chosen, together with the gain, by constraining the derivative of a quadratic Lyapunov function for the estimation error to be negative definite on a given compact set. It is proved that it is sufficient to impose the negative definiteness of such a derivative only on a suitably dense grid of sampling points. The gain is determined by solving a Lyapunov equation. The neural weights are searched for via nonlinear programming by minimizing a cost penalizing grid-point constraints that are not satisfied. Techniques based on low-discrepancy sequences are applied to deal with a small number of sampling points, and, hence, to reduce the computational burden required to optimize the parameters. Numerical results are reported and comparisons with those obtained by the extended Kalman filter are made. Index Terms--Feedforward neural networks, Lyapunov function, offline optimization, penalty function, quasi-random sequences, state observer.

Details

Language :
English
ISSN :
10459227
Volume :
18
Issue :
1
Database :
Gale General OneFile
Journal :
IEEE Transactions on Neural Networks
Publication Type :
Academic Journal
Accession number :
edsgcl.158573434