具有局部和全局指导的多智能体寻路

Yunhong Xu, Yanjie Li, Qi Liu, Jianqi Gao, Yuecheng Liu, Meiling Chen
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引用次数: 6

摘要

多智能体路径查找(MAPF)存在于许多实际应用中,例如智能仓库。在这类场景中,agent需要相互协作,最终到达目标点而不发生碰撞。现有的多智能体路径规划算法主要是集中式算法,如基于冲突的搜索算法(CBS)。然而,这种方法难以实时解决问题,且可扩展性差。本文主要研究智能仓库中的MAPF问题。为了解决这个问题,我们提出了一种新的基于深度强化学习的分散多智能体寻径方法,而不是使用耗时的基于搜索的算法。该算法结合课程学习,利用局部和全局引导机制帮助智能体规划可行路径。因此,该算法的成功率得到了显著提高。实验结果表明,该算法具有良好的泛化能力,在问题规模增大时仍能保持良好的性能。求解效率接近集中式算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multi-agent Pathfinding with Local and Global Guidance
Multi-agent path finding (MAPF) exists in many practical applications, such as intelligent warehouses. In this type of scenario, the agents need to cooperate with each other and eventually reach the target point without collision. The existing multi-agent path planning algorithms are mainly centralized algorithms, such as Conflict-Based Search (CBS). However, this kind of approach is difficult to solve the problem in real time and its scalability is poor. In this work, we focus on solving MAPF problem in intelligent warehouse. To address this problem, instead of using time-consuming search based algorithms, we propose a novel decentralized multi-agent pathfinding method based on deep reinforcement learning. Combined with curriculum learning, the algorithm uses local and global guidance mechanisms to help agents plan feasible paths. As a result, the success rate of the algorithm has been significantly improved. Experimental results show that our algorithm generalizes well and it still performs well when the scale of problem increases. The solution efficiency is close to the centralized algorithms.
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