Constrained Robust Model Predictive Control based on Periodic Invariance
Authors: | Lee Young Il, Seoul National University of Technology, Korea, Republic of Kouvaritakis Basil, Oxford University, United Kingdom |
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Topic: | 2.5 Robust Control |
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Session: | Robust Model Predictive Control |
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Keywords: | Input Constraints, Model Uncertainties, Periodic Invariance, Model Predictive Control, Stabilizable Region, Computational Load |
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Abstract
Many constrained MPCs deploy dual mode strategy based on invariant sets. In this paper, a concept of periodic invariance is introduced in which states are allowed to leave a set temporarily but return into the set in finite time steps. This approach is novel in the sense that a set of different state feedback gains can be used to steer the state back into the starting set. These facts make it possible for the periodically invariant sets to be considerably larger than ordinary invariant sets. The periodic invariance can be defined for systems with polyhedral model uncertainties. We derive computationally very efficient MPC methods based on these periodically invariant sets. Some numerical examples are given to show that the use of periodic invariance yields considerably larger stabilizable sets with better performance than the case of using ordinary invariance.