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Runtime Safety Assurance for Learning-enabled Control of Autonomous Driving Vehicles

Shengduo Chen, Yaowei Sun, Dachuan Li, Qiang Wang, Qi Hao, Joseph Sifakis

20222022 International Conference on Robotics and Automation (ICRA)20 citationsDOI

Abstract

Providing safety guarantees for Autonomous Vehicle (AV) systems with machine-learning based controllers remains a challenging issue. In this work, we propose Simplex-Drive, a framework that can achieve runtime safety assurance for machine-learning enabled controllers of AVs. The proposed Simplex-Drive consists of an unverified Deep Reinforcement Learning (DRL)-based advanced controller (AC) that achieves desirable performance in complex scenarios, a Velocity-Obstacle (VO) based baseline safe controller (BC) with provably safety guarantees, and a verified mode management unit that monitors the operation status and switches the control authority between AC and BC based on safety-related conditions. We provide a formal correctness proof of Simplex-Drive and conduct a lane-changing case study in dense traffic scenarios. The simulation experiment results demonstrate that Simplex-Drive can always ensure the operation safety without sacrificing control performance, even if the DRL policy may lead to deviations from the safe status.

Topics & Concepts

CorrectnessReinforcement learningComputer scienceSafety assuranceController (irrigation)ObstacleActive safetyControl (management)Control engineeringReal-time computingArtificial intelligenceAutomotive engineeringReliability engineeringEngineeringAgronomyLawProgramming languagePolitical scienceBiologyFormal Methods in VerificationAutonomous Vehicle Technology and SafetySafety Systems Engineering in Autonomy
Runtime Safety Assurance for Learning-enabled Control of Autonomous Driving Vehicles | Litcius