Conference Proceedings

A Multi-observer Approach for Parameter and State Estimation of Nonlinear Systems with Slowly Varying Parameters

Luis Cuevas, Dragan Nesic, Chris Manzie, Romain Postoyan

IFAC PAPERSONLINE | ELSEVIER | Published : 2020

Abstract

This manuscript addresses the parameter and state estimation problem for continuous time nonlinear systems with unknown slowly time-varying parameters, which are assumed to belong to a known compact set. The problem is tackled by using the multi-observer approach under the supervisory framework, which generates parameter and state estimates by using a finite number of sample points of the parameter set, a bank of observers, a set of monitoring signals and a selection criterion. This note proposes a novel dynamic sampling policy for the multi-observer technique and studies its convergence properties. We prove that the parameter and state estimation errors are ultimately bounded where the ulti..

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University of Melbourne Researchers

Grants

Awarded by Australian Research Council Discovery Project


Funding Acknowledgements

This work was supported by the Melbourne International Research Scholarship scheme of The University of Melbourne, and by the Australian Research Council Discovery Project (DP170104102).