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Robust data-based predictive control of systems with parametric uncertainties: Paving the way for cooperative learning

Authors

Masero E. , Maestre J.M. , SALVADOR ORTIZ, JOSÉ RAMÓN, Ramirez D.R. , Zhu Q.

External publication

No

Means

J Process Control

Scope

Article

Nature

Científica

JCR Quartile

SJR Quartile

JCR Impact

3.3

SJR Impact

0.908

Publication date

01/12/2023

ISI

001149440000001

Scopus Id

2-s2.0-85174456287

Abstract

This article combines data and tube-based predictive control to deal with systems with bounded parametric uncertainty. This integration generates robustly feasible control sequences that can also be exploited in cooperative scenarios where controllers learn from each other\'s data. In particular, the approach is based on a database that contains information from previous executions of the same and other controllers handling similar systems. By the combination of feasible histories plus an auxiliary control law that deals with bounded uncertainties, which only needs to be stabilizing for at least one of the system realizations within the uncertainty set, this scheme provides a finite-horizon predictive controller that guarantees exponential stability and robust constraint satisfaction. The validity and benefits of the proposed scheme are shown in case studies with linear and non-linear dynamics. © 2023 The Author(s)

Keywords

Cooperative learning; Data-driven control; Predictive control; Robustness; Tube-based control

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