Control Synthesis with Reinforcement Learning: A Modeling Perspective
Systems and Control
2025-12-11 v2 Systems and Control
Abstract
Controllers designed with reinforcement learning can be sensitive to model mismatch. We demonstrate that designing such controllers in a virtual simulation environment with an inaccurate model is not suitable for deployment in a physical setup. Controllers designed using an accurate model is robust against disturbance and small mismatch between the physical setup and the mathematical model derived from first principles; while a poor model results in a controller that performs well in simulation but fails in physical experiments. Sensitivity analysis is used to justify these discrepancies and an empirical region of attraction estimation help us visualize their robustness.
Cite
@article{arxiv.2510.25063,
title = {Control Synthesis with Reinforcement Learning: A Modeling Perspective},
author = {Nikki Xu and Hien Tran},
journal= {arXiv preprint arXiv:2510.25063},
year = {2025}
}