Real-time planning for a combined problem of target assignment and path planning for multiple agents, also known as the unlabeled version of Multi-Agent Path Finding (MAPF), is crucial for high-level coordination in multi-agent systems, e.g., pattern formation by robot swarms. This paper studies two aspects of unlabeled-MAPF: (1) offline scenario: solving large instances by centralized approaches with small computation time, and (2) online scenario: executing unlabeled-MAPF despite timing uncertainties of real robots. For this purpose, we propose TSWAP, a novel sub-optimal complete algorithm, which takes an arbitrary initial target assignment then repeats one-timestep path planning with target swapping. TSWAP can adapt to both offline and online scenarios. We empirically demonstrate that Offline TSWAP is highly scalable; providing near-optimal solutions while reducing runtime by orders of magnitude compared to existing approaches. In addition, we present the benefits of Online TSWAP, such as delay tolerance, through real-robot demos.
翻译:本文研究了未加标签的MAPF的两个方面:(1) 脱线方案:通过集权方法解决大型案例,使用小计算时间,(2) 在线方案:执行未加标签的MAPF,尽管实际机器人的时间不确定。为此,我们提议TSWAP,这是一个新的次级最佳算法,采用任意的初始目标任务,然后重复一次性路径规划与目标转换。TSWAP可以适应离线和在线两种情况。我们从经验上证明,离线 TSWAP非常可伸缩;提供近于最佳的解决方案,同时以与现有方法相比的规模减少运行时间。此外,我们介绍了在线TSWAP的好处,例如通过真机器人制模版进行延迟容忍。