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arxiv:2310.16723

Harmonic model predictive control for tracking sinusoidal references and its application to trajectory tracking

Published on Oct 25, 2023
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Abstract

HMPC is extended to track periodic harmonic/sinusoidal references, maintaining good performance and large domain of attraction with small prediction horizons.

AI-generated summary

Harmonic model predictive control (HMPC) is a recent model predictive control (MPC) formulation for tracking piece-wise constant references that includes a parameterized artificial harmonic reference as a decision variable, resulting in an increased performance and domain of attraction with respect to other MPC formulations. This article presents an extension of the HMPC formulation to track periodic harmonic/sinusoidal references and discusses its use for tracking arbitrary trajectories. The proposed formulation inherits the benefits of its predecessor, namely its good performance and large domain of attraction when using small prediction horizons, and that the complexity of its optimization problem does not depend on the period of the reference. We show closed-loop results discussing its performance and comparing it to other MPC formulations.

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