Regret-Optimal Control under Partial Observability
Abstract
This paper studies online solutions for regret-optimal control in partially observable systems over an infinite-horizon. Regret-optimal control aims to minimize the difference in LQR cost between causal and non-causal controllers while considering the worst-case regret across all -norm-bounded disturbance and measurement sequences. Building on ideas from Sabag et al., 2023, on the the full-information setting, our work extends the framework to the scenario of partial observability (measurement-feedback). We derive an explicit state-space solution when the non-causal solution is the one that minimizes the criterion, and demonstrate its practical utility on several practical examples. These results underscore the framework's significant relevance and applicability in real-world systems.
Cite
@article{arxiv.2311.06433,
title = {Regret-Optimal Control under Partial Observability},
author = {Joudi Hajar and Oron Sabag and Babak Hassibi},
journal= {arXiv preprint arXiv:2311.06433},
year = {2023}
}
Comments
Submitted to ACC 2024