Robust Model Predictive Control Exploiting Monotonicity Properties
Abstract
Robust model predictive control algorithms are essential for addressing unavoidable errors due to the uncertainty in predicting real-world systems. However, the formulation of such algorithms typically results in a trade-off between conservatism and computational complexity. Monotone systems facilitate the efficient computation of reachable sets and thus the straightforward formulation of a robust model predictive control approach optimizing over open-loop predictions. We present an approach based on the division of reachable sets to incorporate feedback in the predictions, resulting in less conservative strategies. The concept of mixed-monotonicity enables an extension of our methodology to non-monotone systems. The potential of the proposed approaches is demonstrated through a nonlinear high-dimensional chemical tank reactor cascade case study.
Cite
@article{arxiv.2408.17348,
title = {Robust Model Predictive Control Exploiting Monotonicity Properties},
author = {Moritz Heinlein and Sankaranarayanan Subramanian and Sergio Lucia},
journal= {arXiv preprint arXiv:2408.17348},
year = {2025}
}
Comments
Accepted as a technical note in "IEEE Transactions on Automatic Control", Early access DOI: 10.1109/TAC.2025.3558137, Code: https://github.com/MoritzHein/RobMPCExploitMon