Learning Model Predictive Control for Periodic Repetitive Tasks

We propose a reference-free learning model predictive controller for periodic repetitive tasks. We consider a problem in which dynamics, constraints and stage cost are periodically time-varying. The controller uses the closed-loop data to construct a time-varying terminal set and a time-varying term...

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Bibliographic Details
Main Authors: Scianca, Nicola, Rosolia, Ugo, Borrelli, Francesco
Format: Journal Article
Language:English
Published: 18-11-2019
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Summary:We propose a reference-free learning model predictive controller for periodic repetitive tasks. We consider a problem in which dynamics, constraints and stage cost are periodically time-varying. The controller uses the closed-loop data to construct a time-varying terminal set and a time-varying terminal cost. We show that the proposed strategy in closed-loop with linear and nonlinear systems guarantees recursive constraints satisfaction, non-increasing open-loop cost, and that the open-loop and closed-loop cost are the same at convergence. Simulations are presented for different repetitive tasks, both for linear and nonlinear systems.
DOI:10.48550/arxiv.1911.07535