Robust integral-observer-based fault estimation for Lipschitz nonlinear systems with time-varying uncertainties

Author:

Zemzemi Ammar1ORCID,Kamel Mohamed2,Toumi Ahmed1,Farza Mondher3

Affiliation:

1. National School of Engineers of Sfax, Tunisia

2. Faculty of Sciences of Sfax, Physics Department Sfax, Tunisia

3. GREYC Laboratory, UMR 6072 CNRS, University of Caen and ENSICAEN, France

Abstract

This paper addresses the problem of state estimation and sensor fault reconstruction conjointly for a class of nonlinear systems with time-varying uncertainties for which the nonlinear characteristic satisfies the Lipschitz circumstance. A hybrid approach based on an integral observer and sliding-mode theory has been proposed in order to model sensor fault as a virtual actuator one. For the augmented model, the observer matching condition is not satisfied. To overcome this problem, a new method, which improves the design approach and enhances the rapidity of the fault estimation convergence, has been proposed. The fault estimation error effect is minimized by integrating the [Formula: see text] disturbance attenuation level. The proposed design is formulated and derived as a linear matrix inequality problem. Parameters of this observer are calculated through the linear matrix inequality technique. The proposed method has been validated through an example of a single-link manipulator robot. Simulation results show that this approach can estimate the state and the sensor fault successfully, despite the time-varying uncertainties and the presence of unknown inputs.

Publisher

SAGE Publications

Subject

Instrumentation

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