Navigation Based on Hybrid Decentralized and Centralized Training and Execution Strategy for Multiple Mobile Robots Reinforcement Learning

Yanyan Dai, Deokgyu Kim, Kidong Lee
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Abstract

In addressing the complex challenges of path planning in multi-robot systems, this paper proposes a novel Hybrid Decentralized and Centralized Training and Execution (DCTE) Strategy, aimed at optimizing computational efficiency and system performance. The strategy solves the prevalent issues of collision and coordination through a tiered optimization process. The DCTE strategy commences with an initial decentralized path planning step based on Deep Q-Network (DQN), where each robot independently formulates its path. This is followed by a centralized collision detection the analysis of which serves to identify potential intersections or collision risks. Paths confirmed as non-intersecting are used for execution, while those in collision areas prompt a dynamic re-planning step using DQN. Robots treat each other as dynamic obstacles to circumnavigate, ensuring continuous operation without disruptions. The final step involves linking the newly optimized paths with the original safe paths to form a complete and secure execution route. This paper demonstrates how this structured strategy not only mitigates collision risks but also significantly improves the computational efficiency of multi-robot systems. The reinforcement learning time was significantly shorter, with the DCTE strategy requiring only 3 min and 36 s compared to 5 min and 33 s in the comparison results of the simulation section. The improvement underscores the advantages of the proposed method in enhancing the effectiveness and efficiency of multi-robot systems.
基于多移动机器人强化学习的分散与集中混合训练和执行策略的导航技术
为应对多机器人系统路径规划的复杂挑战,本文提出了一种新颖的分散与集中混合训练和执行(DCTE)策略,旨在优化计算效率和系统性能。该策略通过分层优化过程解决了普遍存在的碰撞和协调问题。DCTE 策略首先是基于深度 Q 网络(DQN)的初始分散路径规划步骤,每个机器人独立制定自己的路径。随后是集中式碰撞检测,通过分析碰撞检测来确定潜在的交叉点或碰撞风险。经确认无交叉的路径将被用于执行,而处于碰撞区域的路径则会提示使用 DQN 进行动态重新规划。机器人将彼此视为需要绕行的动态障碍物,确保无中断地持续运行。最后一步是将新优化的路径与原来的安全路径连接起来,形成一条完整而安全的执行路径。本文展示了这种结构化策略如何不仅降低碰撞风险,而且显著提高多机器人系统的计算效率。强化学习时间大大缩短,DCTE 策略仅需 3 分 36 秒,而模拟部分的对比结果为 5 分 33 秒。这一改进凸显了拟议方法在提高多机器人系统的有效性和效率方面的优势。
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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