Litcius/Paper detail

Safe Reinforcement Learning for Model-Reference Trajectory Tracking of Uncertain Autonomous Vehicles With Model-Based Acceleration

Yifan Hu, Junjie Fu, Guanghui Wen

2023IEEE Transactions on Intelligent Vehicles90 citationsDOI

Abstract

Applying reinforcement learning (RL) algorithms to control systems design remains a challenging task due to the potential unsafe exploration and the low sample efficiency. In this paper, we propose a novel safe model-based RL algorithm to solve the collision-free model-reference trajectory tracking problem of uncertain autonomous vehicles (AVs). Firstly, a new type of robust control barrier function (CBF) condition for collision-avoidance is derived for the uncertain AVs by incorporating the estimation of the system uncertainty with Gaussian process (GP) regression. Then, a robust CBF-based RL control structure is proposed, where the nominal control input is composed of the RL policy and a model-based reference control policy. The actual control input obtained from the quadratic programming problem can satisfy the constraints of collision-avoidance, input saturation and velocity boundedness simultaneously with a relatively high probability. Finally, within this control structure, a Dyna-style safe model-based RL algorithm is proposed, where the safe exploration is achieved through executing the robust CBF-based actions and the sample efficiency is improved by leveraging the GP models. The superior learning performance of the proposed RL control structure is demonstrated through simulation experiments.

Topics & Concepts

Reinforcement learningComputer scienceCollision avoidanceControl theory (sociology)TrajectoryAccelerationQuadratic programmingGaussian processCollisionMathematical optimizationGaussianArtificial intelligenceControl (management)MathematicsAstronomyComputer securityPhysicsQuantum mechanicsClassical mechanicsAdvanced Control Systems OptimizationReinforcement Learning in RoboticsElectric and Hybrid Vehicle Technologies