Journal article

Non-minimal state-space model-based continuous-time model predictive control with constraints

L Wang, PC Young, PJ Gawthrop, CJ Taylor

International Journal of Control | Published : 2009

Abstract

This article proposes a model predictive control scheme based on a non-minimal state-space (NMSS) structure. Such a combination yields a continuous-time state-space model predictive control system that permits hard constraints to be imposed on both plant input and output variables, whilst using NMSS output-feedback without the need for an observer. A comparison between the NMSS and observer-based approaches using Monte Carlo uncertainty analysis shows that the former design is considerably less sensitive to plant-model mismatch than the latter. Through simulation studies, the article also investigates the role of the implementation filter in noise attenuation, disturbance rejection and robus..

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University of Melbourne Researchers