An approach for constrained predictive control of linear systems (or uncertain systems described by polytopic uncertainty models) is presented. The approach consists of (in general non-convex, but often convex) offline optimization, and very efficient online optimization. Two examples, one being a laboratory experiment, compare the approach to existing approaches, revealing both advantages and disadvantages. 2005 Elsevier Ltd. All rights reserved.
Lars Imsland, Nadav S. Bar, Bjarne A. Foss