4.7 Article

Coalitional predictive control: Consensus-based coalition forming with robust regulation

期刊

AUTOMATICA
卷 125, 期 -, 页码 -

出版社

PERGAMON-ELSEVIER SCIENCE LTD
DOI: 10.1016/j.automatica.2020.109380

关键词

Model predictive control; Decentralization; Switched systems

资金

  1. Harry Nicholson Ph.D. Scholarship, Department of Automatic Control & Systems Engineering, University of Sheffield

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This study proposes a coalitional control scheme to balance the performance degradation of decentralized control with the practical cost of centralized control. By using a robust form of distributed model predictive control and an algorithm for coalition forming based on consensus theory and potential games, controllers can group together into coalitions and operate as a single entity, ensuring recursive feasibility and stability.
This paper is concerned with the problem of controlling a system of constrained dynamic subsystems in a way that balances the performance degradation of decentralized control with the practical cost of centralized control. We propose a coalitional control scheme in which controllers of subsystems may, as the need arises, group together into coalitions and operate as a single entity. The scheme employs a robust form of distributed model predictive control for which recursive feasibility and stability are guaranteed, yet - uniquely - the reliance on robust invariant sets is merely implicit, thus enabling applicability to higher-order systems. The robust control algorithm is combined with an algorithm for coalition forming based on consensus theory and potential games; we establish conditions under which controllers reach a consensus on the sets of coalitions. The recursive feasibility and closed-loop stability of the overall time-varying coalitional control scheme are established under a sufficient dwell time, the existence of which is guaranteed. (C) 2020 Elsevier Ltd. All rights reserved.

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