Path planning of mobile robot based on deep reinforcement learning with transfer learning strategy

Jie Zhu, Chuanhai Yang, Zhaodong Liu, Chengdong Yang
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Abstract

Under complex environments, mobile robots can decision-making, autonomous learning, intelligent obstacle avoidance, and complete the task from start point to endpoint. This paper designed the mobile robot, excluding planners and unknown maps, which can successfully reach the target by autonomously learning and navigating in the unknown environment. By applying deep reinforcement learning to the path planning of mobile robots, the robot can collect data and conduct training on its own, and improve it autonomously without manual supervision. Consequently, it can complete the path planning task. The application of transfer learning improves the adaptive efficiency of the mobile robot to the environment. Finally, the results are verified by comparative experiments in three simulation environments.
基于迁移学习策略的深度强化学习移动机器人路径规划
在复杂环境下,移动机器人能够进行决策、自主学习、智能避障,完成从起点到终点的任务。本文设计的移动机器人在不考虑规划者和未知地图的情况下,能够在未知环境中通过自主学习和导航成功到达目标。通过将深度强化学习应用到移动机器人的路径规划中,机器人可以自己收集数据并进行训练,在没有人工监督的情况下自主改进。因此,它可以完成路径规划任务。迁移学习的应用提高了移动机器人对环境的自适应效率。最后,通过三种仿真环境下的对比实验对结果进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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