Reinforcement Learning for Safe Robot Control using Control Lyapunov Barrier Functions (2305.09793v1)
Abstract: Reinforcement learning (RL) exhibits impressive performance when managing complicated control tasks for robots. However, its wide application to physical robots is limited by the absence of strong safety guarantees. To overcome this challenge, this paper explores the control Lyapunov barrier function (CLBF) to analyze the safety and reachability solely based on data without explicitly employing a dynamic model. We also proposed the Lyapunov barrier actor-critic (LBAC), a model-free RL algorithm, to search for a controller that satisfies the data-based approximation of the safety and reachability conditions. The proposed approach is demonstrated through simulation and real-world robot control experiments, i.e., a 2D quadrotor navigation task. The experimental findings reveal this approach's effectiveness in reachability and safety, surpassing other model-free RL methods.
- Desong Du (2 papers)
- Shaohang Han (6 papers)
- Naiming Qi (2 papers)
- Jun Wang (991 papers)
- Wei Pan (149 papers)
- Haitham bou Ammar (29 papers)