Which MAPF Model Works Best for Automated Warehousing?

Sumanth Varambally, Jiaoyang Li, Sven Koenig
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引用次数: 6

Abstract

Multi-Agent Path Finding (MAPF) algorithms and their variants can find high-quality collision-free plans for automated warehousing under simplified assumptions about the robot dynamics. However, these simplifying assumptions pose challenging implementational issues as the robots cannot follow the plans precisely. Various robust execution frameworks, such as the Action Dependency Graph (ADG) framework, have been proposed to enable the real-world execution of MAPF plans. Under such a framework, it is unclear how the simplifying assumptions affect the performance of the robots. In this work, we first argue that the ADG framework provides the same robustness guarantees as the single-agent framework (where plans are generated independently for each robot and collisions are avoided through a reservation table), which is widely used in industry. We then improve the efficiency of the ADG framework by integrating it with the Rolling-Horizon Collision-Resolution framework to solve MAPF problems with a persistent stream of online tasks. Using the integrated framework, we compare the standard MAPF model with many of its more complex variants, such as MAPF with rotation, k-robust MAPF, and continuous-time MAPF (taking robot dynamics into account). We examine their effectiveness in improving throughput through realistic simulations of warehouse settings with the Gazebo simulator.
哪种MAPF模型最适合自动化仓储?
多智能体寻径算法及其变体可以在简化机器人动力学假设的情况下,为自动化仓储找到高质量的无碰撞方案。然而,这些简化的假设带来了具有挑战性的实施问题,因为机器人不能精确地遵循计划。已经提出了各种健壮的执行框架,例如动作依赖图(Action Dependency Graph, ADG)框架,以支持MAPF计划的实际执行。在这样的框架下,尚不清楚简化的假设如何影响机器人的性能。在这项工作中,我们首先认为ADG框架提供了与单智能体框架相同的鲁棒性保证(其中每个机器人独立生成计划,并通过预订表避免碰撞),这在工业中广泛使用。然后,我们通过将ADG框架与滚动地平线碰撞解决框架集成来解决具有持续在线任务流的MAPF问题,从而提高了ADG框架的效率。使用集成框架,我们将标准MAPF模型与其许多更复杂的变体进行比较,例如旋转MAPF, k-鲁棒MAPF和连续时间MAPF(考虑机器人动力学)。我们通过使用Gazebo模拟器对仓库设置进行现实模拟,来检验它们在提高吞吐量方面的有效性。
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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