Wen Ou;Biao Luo;Xiaodong Xu;Yu Feng;Yuqian Zhao
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引用次数: 0

摘要

多机器人协同导航问题(MCNP)是多机器人控制领域的一个重要课题。本文提出了一种名为 GAR-CoNav 的分布式方法,用于解决面对静态和动态障碍物时多机器人前往多个目的地的导航问题。各代理应在不相互冲突的情况下前往不同目的地,以实现最高效率。这就是混合环境下的合作导航。速度障碍物编码与图形相结合,建立了一种全局表示法,可帮助代理捕捉混合环境中的复杂交互。GAR-CoNav 通过图注意网络处理和聚合环境特征,并具有可扩展性,以适应图中实体数量的变化。我们开发了一种新颖的奖励函数,用于训练代理实现实际的合作导航策略。广泛的模拟实验证明,GAR-CoNav 比最先进的方法取得了更好的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Reinforcement Learned Multiagent Cooperative Navigation in Hybrid Environment With Relational Graph Learning
The multirobot cooperative navigation problem (MCNP) is an essential topic in multiagent control. This article proposes a distributed approach named GAR-CoNav to solve the navigation problem of multiagent to multiple destinations in the face of static and dynamic obstacles. Agents are expected to travel to different destinations without conflicting with each other to achieve maximum efficiency. That is, cooperative navigation in hybrid environment. The velocity obstacle encoding is combined with a graph to build a global representation, which helps the agent capture complex interactions in hybrid environment. GAR-CoNav processes and aggregates environmental features through the graph attention network and has scalability for the changing number of entities in the graph. A novel reward function is developed to train agents to achieve an actual cooperative navigation policy. Extensive simulation experiments demonstrate that GAR-CoNav achieves better performance than state-of-the-art methods.
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CiteScore
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