In modern fulfillment warehouses, agents traverse the map to complete endless tasks that arrive on the fly, which is formulated as a lifelong Multi-Agent Path Finding (lifelong MAPF) problem. The goal of tackling this challenging problem is to find the path for each agent in a finite runtime while maximizing the throughput. However, existing methods encounter exponential growth of runtime and undesirable phenomena of deadlocks and rerouting as the map size or agent density grows. To address these challenges in lifelong MAPF, we explore the idea of highways mainly studied for one-shot MAPF (i.e., finding paths at once beforehand), which reduces the complexity of the problem by encouraging agents to move in the same direction. We utilize two methods to incorporate the highway idea into the lifelong MAPF framework and discuss the properties that minimize the existing problems of deadlocks and rerouting. The experimental results demonstrate that the runtime is considerably reduced and the decay of throughput is gradually insignificant as the map size enlarges under the settings of the highway. Furthermore, when the density of agents increases, the phenomena of deadlocks and rerouting are significantly reduced by leveraging the highway.
翻译:在现代化的配送仓库中,代理商在地图上完成无数任务,这被界定为生涯式多智能体路径规划 (lifelong MAPF) 问题。解决这一挑战性的问题的目标是在有限的时间内为每个代理商找到路径,同时最大程度地提高通量。然而,现有的方法在地图大小或代理商密度增加时,遇到运行时间指数增长和死锁和重新路径的不良现象。为了解决在生涯型MAPF中遇到的这些挑战,我们探索了高速公路的想法,主要是研究一次性MAPF(即先前找到路径)中的想法,通过鼓励代理商沿着相同的方向移动,减少了问题的复杂性。我们利用两种方法将公路的想法纳入生涯式MAPF框架,并讨论减少死锁和重新路径的现有问题的性质。实验结果表明,在公路的设置下,运行时间大大缩短,随着地图尺寸增加,通量的下降逐渐不重要。此外,当代理商密度增加时,利用高速公路显着减少了死锁和重新路径等现象。