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Robust stabilization of nonlinear processes using...
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Robust stabilization of nonlinear processes using hybrid predictive control

Abstract

in this work, we consider nonlinear systems with input constraints and uncertain variables, and develop a robust hybrid predictive control structure that provides a safety net for the implementation of any model predictive control (MPC) formulation, designed with or without taking uncertainty into account. The key idea is to use a Lyapunov-based bounded robust controller, for which an explicit characterization of the region of robust closed-loop stability can be obtained, to provide a stability region within which any available MPC formulation can be implemented. This is achieved by devising switching laws that orchestrate switching between MPC and the bounded robust controller in a way that exploits the performance of MPC whenever possible, while using the bounded controller as a fall-back controller that can be switched in at any time to maintain robust closed-loop stability in the event that the predictive controller fails to yield a control move (due, for example, to computational difficulties in the optimization or infeasibility) or leads to instability (due, for example, to inappropriate penalties and/or horizon length in the objective function). The implementation and efficacy of the robust hybrid predictive control structure are demonstrated through simulations using a chemical process example. Copyright © 2005 IFAC.

Authors

Mhaskar P; El-Farra NH; Christofides PD

Volume

16

Pagination

pp. 1013-1018

Publication Date

January 1, 2005

DOI

10.3182/20050703-6-cz-1902.00825

Conference proceedings

IFAC Proceedings Volumes IFAC Papersonline

ISSN

1474-6670
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