Litcius/Paper detail

Safe Reinforcement Learning Using Robust Control Barrier Functions

Yousef Emam, Gennaro Notomista, Paul Glotfelter, Zsolt Kira, Magnus Egerstedt

2022IEEE Robotics and Automation Letters55 citationsDOI

Abstract

Reinforcement Learning (RL) has been shown to be effective in many scenarios. However, it typically requires the exploration of a sufficiently large number of state-action pairs, some of which may be unsafe. Consequently, its application to safety-critical systems remains a challenge. An increasingly common approach to address safety involves the addition of a safety layer that projects the RL actions onto a safe set of actions. In turn, a difficulty for such frameworks is how to effectively couple RL with the safety layer to improve the learning performance. In this paper, we frame safety as a differentiable robust-control-barrier-function layer in a model-based RL framework. Moreover, we also propose an approach to modularly learn the underlying reward-driven task, independent of safety constraints. We demonstrate that this approach both ensures safety and effectively guides exploration during training in a range of experiments, including zero-shot transfer when the reward is learned in a constraint-agnostic fashion.

Topics & Concepts

Reinforcement learningComputer scienceFrame (networking)Constraint (computer-aided design)Set (abstract data type)Function (biology)Task (project management)Differentiable functionArtificial intelligenceEngineeringSystems engineeringMechanical engineeringMathematicsTelecommunicationsEvolutionary biologyBiologyMathematical analysisProgramming languageSoftware Reliability and Analysis ResearchSafety Systems Engineering in AutonomyAdversarial Robustness in Machine Learning