A Soft Actor-Critic Deep Reinforcement-Learning-Based Robot Navigation Method Using LiDAR

Author:

Liu Yanjie1,Wang Chao1,Zhao Changsen1,Wu Heng1,Wei Yanlong1

Affiliation:

1. State Key Laboratory of Robotics and Systems (HIT), Department of Mechatronics Engineering, Harbin Institute of Technology, Harbin 150001, China

Abstract

When there are dynamic obstacles in the environment, it is difficult for traditional path-generation algorithms to achieve desired obstacle-avoidance results. To solve this problem, we propose a robot navigation control method based on SAC (Soft Actor-Critic) Deep Reinforcement Learning. Firstly, we use a fast path-generation algorithm to control the robot to generate expert trajectories when the robot encounters danger as well as when it approaches a target, and we combine SAC reinforcement learning with imitation learning based on expert trajectories to improve the safety of training. Then, for the hybrid data consisting of agent data and expert data, we use an improved prioritized experience replay method to improve the learning efficiency of the policies. Finally, we introduce RNN (Recurrent Neural Network) units into the network structure of the SAC Deep Reinforcement-Learning navigation policy to improve the agent’s transfer inference ability in a new environment and obstacle-avoidance ability in dynamic environments. Through simulation and practical experiments, it is fully verified that our method has a higher training efficiency and navigation success rate compared to state-of-the-art reinforcement-learning algorithms, which further enhances the obstacle-avoidance capability of the robot system.

Funder

Key Special Projects of Heilongjiang Province's Key R&D Program

Publisher

MDPI AG

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