English

Learning over Forward-Invariant Policy Classes: Reinforcement Learning without Safety Concerns

Systems and Control 2026-04-10 v1 Systems and Control

Abstract

This paper proposes a safe reinforcement learning (RL) framework based on forward-invariance-induced action-space design. The control problem is cast as a Markov decision process, but instead of relying on runtime shielding or penalty-based constraints, safety is embedded directly into the action representation. Specifically, we construct a finite admissible action set in which each discrete action corresponds to a stabilizing feedback law that preserves forward invariance of a prescribed safe state set. Consequently, the RL agent optimizes policies over a safe-by-construction policy class. We validate the framework on a quadcopter hover-regulation problem under disturbance. Simulation results show that the learned policy improves closed-loop performance and switching efficiency, while all evaluated policies remain safety-preserving. The proposed formulation decouples safety assurance from performance optimization and provides a promising foundation for safe learning in nonlinear systems.

Keywords

Cite

@article{arxiv.2604.07875,
  title  = {Learning over Forward-Invariant Policy Classes: Reinforcement Learning without Safety Concerns},
  author = {Chieh Tsai and Muhammad Junayed Hasan Zahed and Salim Hariri and Hossein Rastgoftar},
  journal= {arXiv preprint arXiv:2604.07875},
  year   = {2026}
}
R2 v1 2026-07-01T12:00:39.247Z