Reinforcement Learning for Multi-Robot System: A Review

Xudong Yang
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引用次数: 2

Abstract

The optimization control of multi-robot systems based on Reinforcement Learning is the frontier field of Robotics and distributed Artificial Intelligence in recent years. Multi-robot systems have the characteristics of distribution, heterogeneity, and high-dimensional spatial continuity, which makes the research of reinforcement learning for multi-robot systems face a series of challenges. This paper reviews the challenges in four practical problems of the multi-robot system which are distributed collaborative driving of multiple vehicles, mobile sensing robot team, multi-robot collaborative monitoring, and multi-UAV cooperative task planning and the latest solutions of them. Methods based on Deep Reinforcement Learning and Multi-Agent Reinforcement Learning are also described. This review may be useful to guide researchers and technologists from the industry in their choice of better cope with the multi-robot system's problems.
多机器人系统的强化学习研究综述
基于强化学习的多机器人系统优化控制是近年来机器人技术和分布式人工智能研究的前沿领域。多机器人系统具有分布性、异质性和高维空间连续性等特点,这使得多机器人系统的强化学习研究面临一系列挑战。本文综述了多车分布式协同驾驶、移动传感机器人团队、多机器人协同监控和多无人机协同任务规划这四个多机器人系统实际问题所面临的挑战及其最新解决方案。介绍了基于深度强化学习和多智能体强化学习的方法。这一综述可能有助于指导行业的研究人员和技术人员选择更好地应对多机器人系统的问题。
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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