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Conference Papers Year : 2012

Advances in observer design for Takagi-Sugeno systems with unmeasurable premise variables

Abstract

This paper proposes a new approach of observer design for nonlinear systems described by a Takagi-Sugeno model. Its main contribution concerns models with premise variables depending on the system states which are completely or partially unknown. This case is more difficult than when the premise variables are known or measured. Indeed, in that case, weighting functions of the observer depend on state estimates and the state estimation error is then governed by a Lipschitz nonlinear system. Here, two mains results are established. Firstly, relaxed stability conditions guaranteeing asymptotic stability of the observer by using a polyquadratic Lyapunov function are provided. This aims to reduce the conservativeness compared to the existing works and enhance the maximal admissible Lipschitz constant for which the linear matrix inequality (LMI) conditions are feasible. Secondly, the Input-to-State Stability concept combined to a polyquadratic Lyapunov function are used for guaranteeing a bounded state estimation error which relaxes the conservativeness related to the Lipschitz constant. The robustness aspect is dealt with respect to some bounded modeling uncertainties and additive bounded perturbations. The stability conditions are expressed in terms of LMI.
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Dates and versions

hal-00684701 , version 1 (08-04-2014)

Identifiers

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Dalil Ichalal, Benoît Marx, José Ragot, Didier Maquin. Advances in observer design for Takagi-Sugeno systems with unmeasurable premise variables. 20th Mediterranean Conference on Control and Automation, MED 2012, Jul 2012, Barcelone, Spain. pp.848-853, ⟨10.1109/MED.2012.6265744⟩. ⟨hal-00684701⟩
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