论文标题
使用深度强化学习进行多机器人导航的分散运动计划
Decentralized Motion Planning for Multi-Robot Navigation using Deep Reinforcement Learning
论文作者
论文摘要
这项工作提出了一个分散的运动计划框架,用于使用深入的强化学习来解决多机手导航的任务。开发了一个自定义模拟器,以实验研究4个合作非全面机器人的导航问题,在3种不同的环境中相互共享有限的状态信息。采用了通过共同和共同的政策学习的分散运动计划的概念,因为代理人是相互独立的,并且表现出异步运动行为,因此可以在随机环境中对这种方法进行强有力的训练和测试。通过为代理提供稀疏的观察空间,并要求它们生成连续的动作命令,从而有效而安全地导航到各自的目标位置,同时避免始终与其他动态同伴和静态障碍发生碰撞,从而进一步加剧了这项任务。实验结果是根据培训和部署阶段的定量措施和定性评论报告的。
This work presents a decentralized motion planning framework for addressing the task of multi-robot navigation using deep reinforcement learning. A custom simulator was developed in order to experimentally investigate the navigation problem of 4 cooperative non-holonomic robots sharing limited state information with each other in 3 different settings. The notion of decentralized motion planning with common and shared policy learning was adopted, which allowed robust training and testing of this approach in a stochastic environment since the agents were mutually independent and exhibited asynchronous motion behavior. The task was further aggravated by providing the agents with a sparse observation space and requiring them to generate continuous action commands so as to efficiently, yet safely navigate to their respective goal locations, while avoiding collisions with other dynamic peers and static obstacles at all times. The experimental results are reported in terms of quantitative measures and qualitative remarks for both training and deployment phases.