Potential Fields Guided Deep Reinforcement Learning for Optimal Path Planning in a Warehouse

Jing Ren, Xishi Huang
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引用次数: 2

Abstract

Using mobile robots for transportation in a warehouse is becoming more and more common. Compared with human staff, these robots can handle the goods more accurately and more efficiently. Using robots can greatly reduce the operation cost of a warehouse. Optimal path planning for these robots can reduce the transportation time, guarantee the safety of the people in the warehouse, and reduce the goods delivery time and increase daily output. In this paper, we propose an optimal path planning algorithm for the mobile robot using deep reinforcement learning (DRL). Potential fields are employed to guide to collect better quality training data to improve data efficiency. The simulation results have shown that DRL can successfully reach the goal position and avoid collision with the obstacles using the potential fields guided trail-and-error method.
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基于势场引导的深度强化学习仓库最优路径规划
在仓库中使用移动机器人进行运输正变得越来越普遍。与人类员工相比,这些机器人可以更准确、更高效地处理货物。使用机器人可以大大降低仓库的运营成本。对这些机器人进行最优路径规划,可以减少运输时间,保证仓库人员的安全,减少货物交付时间,增加日产量。本文提出了一种基于深度强化学习(DRL)的移动机器人最优路径规划算法。利用势场进行引导,收集更优质的训练数据,提高数据效率。仿真结果表明,采用势场引导的跟踪误差方法,DRL能够成功到达目标位置,避免与障碍物碰撞。
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