Home /Research /An Obstacle-Avoidance Motion Planning Method for Redundant Space Robot via Reinforcement Learning
LEARNING

An Obstacle-Avoidance Motion Planning Method for Redundant Space Robot via Reinforcement Learning

Zeyuan Huang, Gang Chen, Yue Shen, Ruiquan Wang, Chuankai Liu, Long Zhang

Year
2023
Citations
14
Access
Open access

Abstract

On-orbit operation tasks require the space robot to work in an unstructured dynamic environment, where the end-effector’s trajectory and obstacle avoidance need to be guaranteed simultaneously. To ensure the completability and safety of the tasks, this paper proposes a new obstacle-avoidance motion planning method for redundant space robots via reinforcement learning (RL). First, the motion planning framework, which combines RL with the null-space motion for redundant space robots, is proposed according to the decomposition of joint motion. Second, the RL model for null-space obstacle avoidance is constructed, where the RL agent’s state and reward function are defined independent of the specific information of obstacles so that it can adapt to dynamic environmental changes. Finally, a curriculum learning-based training strategy for RL agents is designed to improve sample efficiency, training stability, and obstacle-avoidance performance. The simulation shows that the proposed method realizes reactive obstacle avoidance while maintaining the end-effector’s predetermined trajectory, as well as the adaptability to unstructured dynamic environments and robustness to the space robot’s dynamic parameters.

Keywords

Obstacle avoidanceReinforcement learningComputer scienceRobotRobustness (evolution)ObstacleControl theory (sociology)Motion planningArtificial intelligenceState space

Related papers

Browse all LEARNING papers