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Distributed Model Predictive Control for Tracking: A Coalitional Clustering Approach

Autores

Chanfreut, Paula , Maestre, Jose Maria , Ferramosca, Antonio , MUROS, FRANCISCO JAVIER, Camacho, Eduardo F. F.

Publicación externa

Si

Medio

IEEE Trans. Autom. Control

Alcance

Article

Naturaleza

Científica

Cuartil JCR

Cuartil SJR

Impacto JCR

6.8

Impacto SJR

4.334

Fecha de publicacion

01/12/2022

ISI

000895440500048

Scopus Id

2-s2.0-85121362465

Abstract

In this article, a coalitional robust model predictive controller for tracking target sets is presented. The overall system is controlled by a set of local control agents that dynamically merge into cooperative coalitions or clusters so as to attain an efficient tradeoff between cooperation burden and global performance optimality. Within each cluster, the agents coordinate their inputs to maximize their collective performance, while considering the coupling effect with external subsystems as uncertainty. By using a tube-based approach, the overall system state is driven to the target sets while satisfying state and input constraints despite the changes in the controllers' clustering. Likewise, feasibility and stability of the closed-loop system are guaranteed by tracking techniques. The applicability of the proposed approach is illustrated by an academic example.

Palabras clave

Coalitional model predictive control; control by clustering; robust control; tracking

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