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Multi-objective performance optimisation for model predictive control by goal attainment
Authors:Vasileios Exadaktylos  C James Taylor
Affiliation:1. Department of Biosystems, Division M3-BIORES: Measure, Model and Manage Bioresponses , Catholic University of Leuven , Kasteelpark Arenberg 30, 3001 Heverlee, Belgium Vasileios.Exadaktylos@biw.kuleuven.be;3. Department of Engineering , Lancaster University , Lancaster, LA1 4YR, UK
Abstract:This article proposes an approach for performance tuning of model predictive control (MPC) using goal-attainment optimisation of the cost function weighting matrices. The approach is developed for three formulations of the control problem: (i) minimal and (ii) non-minimal design based on the same cost function and (iii) a non-minimal MPC approach with an explicit integral-of-error state variable and modified cost function. This approach is based on earlier research into multi-objective optimisation for proportional-integral-plus control systems. Simulation experiments for a 3-input, 3-output Shell heavy oil fractionator model illustrate the feasibility of MPC goal attainment for multivariable decoupling and attainment of a specific output response. For this example, the integral-of-error state variable offers improved design flexibility and hence, when it is combined with the proposed tuning method, yields an improved closed-loop response in comparison to minimal MPC.
Keywords:model predictive control  non-minimal state space  optimal controller tuning  decoupling
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