Ellipsoidal partitions for improved multi-stage robust model predictive control
Abstract
Ellipsoidal tube-based model predictive control methods effectively account for the propagation of the reachable set, typically employing linear feedback policies. In contrast, scenario-based approaches offer more flexibility in the feedback structure by considering different control actions for different branches of a scenario tree. However, they face challenges in ensuring rigorous guarantees. This work aims to integrate the strengths of both methodologies by enhancing ellipsoidal tube-based MPC with a scenario tree formulation. The uncertainty ellipsoids are partitioned by halfspaces such that each partitioned set can be controlled independently. The proposed ellipsoidal multi-stage approach is demonstrated in a human-robot system, highlighting its advantages in handling uncertainty while maintaining computational tractability.
Cite
@article{arxiv.2509.12792,
title = {Ellipsoidal partitions for improved multi-stage robust model predictive control},
author = {Moritz Heinlein and Florian Messerer and Moritz Diehl and Sergio Lucia},
journal= {arXiv preprint arXiv:2509.12792},
year = {2025}
}
Comments
Paper accepted for CDC 2025, Code available under: https://github.com/MoritzHein/Ellipsoid_Partition