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Main Authors: Zieglmeier, Sebastian, de Badyn, Mathias Hudoba, Warakagoda, Narada D., Krogstad, Thomas R., Engelstad, Paal
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2504.00746
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author Zieglmeier, Sebastian
de Badyn, Mathias Hudoba
Warakagoda, Narada D.
Krogstad, Thomas R.
Engelstad, Paal
author_facet Zieglmeier, Sebastian
de Badyn, Mathias Hudoba
Warakagoda, Narada D.
Krogstad, Thomas R.
Engelstad, Paal
contents Data-enabled predictive control (DeePC) has emerged as a powerful technique to control complex systems without the need for extensive modeling efforts. However, relying solely on offline collected data trajectories to represent the system dynamics introduces certain drawbacks. Therefore, we present a novel semi-data-driven model predictive control (SD-MPC) framework that combines (limited) model information with DeePC to address a range of these drawbacks, including sensitivity to noisy data and a lack of robustness. In this work, we focus on the performance of DeePC in operating regimes not captured by the offline collected data trajectories and demonstrate how incorporating an underlying parametric model can counteract this issue. SD-MPC exhibits equivalent closed-loop performance as DeePC for deterministic linear time-invariant systems. Simulations demonstrate the general control performance of the proposed SD-MPC for both a linear time-invariant system and a nonlinear system modeled as a linear parameter-varying system. These results provide numerical evidence of the enhanced robustness of SD-MPC over classical DeePC.
format Preprint
id arxiv_https___arxiv_org_abs_2504_00746
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Semi-Data-Driven Model Predictive Control: A Physics-Informed Data-Driven Control Approach
Zieglmeier, Sebastian
de Badyn, Mathias Hudoba
Warakagoda, Narada D.
Krogstad, Thomas R.
Engelstad, Paal
Systems and Control
Data-enabled predictive control (DeePC) has emerged as a powerful technique to control complex systems without the need for extensive modeling efforts. However, relying solely on offline collected data trajectories to represent the system dynamics introduces certain drawbacks. Therefore, we present a novel semi-data-driven model predictive control (SD-MPC) framework that combines (limited) model information with DeePC to address a range of these drawbacks, including sensitivity to noisy data and a lack of robustness. In this work, we focus on the performance of DeePC in operating regimes not captured by the offline collected data trajectories and demonstrate how incorporating an underlying parametric model can counteract this issue. SD-MPC exhibits equivalent closed-loop performance as DeePC for deterministic linear time-invariant systems. Simulations demonstrate the general control performance of the proposed SD-MPC for both a linear time-invariant system and a nonlinear system modeled as a linear parameter-varying system. These results provide numerical evidence of the enhanced robustness of SD-MPC over classical DeePC.
title Semi-Data-Driven Model Predictive Control: A Physics-Informed Data-Driven Control Approach
topic Systems and Control
url https://arxiv.org/abs/2504.00746