The problem of constructing a receding-horizon estimator for nonlinear discrete-time systems affected by disturbances has been addressed. The noises are assumed to be bounded, additive, and acting on both state and measurement equations. The estimator is designed according to a sliding-window strategy, i.e., so that it minimizes a receding-horizon estimation cost function. The stability of the resulting filter has been investigated and an upper bound on the estimation error has been found. Such a filter can be suitably approximated by parametrized nonlinear approximators as, for example, neural networks. A min-max algorithm turns out to be well-suited to selecting these parameters, as it allows one to guarantee the stability of the error dynamics of the approximate receding-horizon filter. This estimator is designed off line in such a way as to be able to process any possible information pattern. This enables it to generate state estimates almost instantly with a small on-line computational burden.

Receding-horizon estimation for noisy nonlinear discrete-time systems / A. Alessandri; M. Baglietto; G. Battistelli; T. Parisini. - STAMPA. - 6:(2003), pp. 5825-5830. (Intervento presentato al convegno 42nd IEEE Conference on Decision and Control tenutosi a Maui, USA) [10.1109/CDC.2003.1271934].

Receding-horizon estimation for noisy nonlinear discrete-time systems

BATTISTELLI, GIORGIO;
2003

Abstract

The problem of constructing a receding-horizon estimator for nonlinear discrete-time systems affected by disturbances has been addressed. The noises are assumed to be bounded, additive, and acting on both state and measurement equations. The estimator is designed according to a sliding-window strategy, i.e., so that it minimizes a receding-horizon estimation cost function. The stability of the resulting filter has been investigated and an upper bound on the estimation error has been found. Such a filter can be suitably approximated by parametrized nonlinear approximators as, for example, neural networks. A min-max algorithm turns out to be well-suited to selecting these parameters, as it allows one to guarantee the stability of the error dynamics of the approximate receding-horizon filter. This estimator is designed off line in such a way as to be able to process any possible information pattern. This enables it to generate state estimates almost instantly with a small on-line computational burden.
2003
Proceedings 42nd IEEE Conference on Decision and Control
42nd IEEE Conference on Decision and Control
Maui, USA
A. Alessandri; M. Baglietto; G. Battistelli; T. Parisini
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/779222
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