Cooperatively Scheduling Hundreds of Fetch and Freight Robots in an Autonomous Warehouse

Shiqing Fu, Jian Li, Zhang-Hua Fu
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引用次数: 1

Abstract

Homogeneous robotic sorting systems, such as the famous Kiva system which follows the shelves-to-workers mode, have been successfully used in warehouses. However, these systems generally have shortages in two-folds, i.e., (1) redundant moves of shelves, and (2) unavoidable manual operations. To overcome these shortages, an alternative solution is using heterogeneous robots (fetch and freight robots) cooperatively to accomplish sorting tasks. In this field, the existing works mostly focus on the design of robots, while there is no public literature (to our best knowledge) which studies how to coordinately schedule a large number of fetch and freight robots. To fit this blank, this paper first proposes a cooperative algorithm to schedule hundreds of heterogeneous robots. The algorithm adopts a cloud-edge-terminal architecture, where the cloud is responsible for allocating tasks and robots, the edge computing units monitor the status of each regional area, while the terminals (robots) are able to plan their own paths (guided by the edge computing units) and resolve conflicts by bidding mechanisms. A simulation platform is developed, based on a large amount of simulations (with up to 330 robots) are carried out to analyze the impacts of several key components of the algorithm and confirm the superiority of our algorithm.
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自主仓库中数百个取货机器人的协同调度
同类机器人分拣系统,如著名的Kiva系统,它遵循货架到工人的模式,已经成功地应用于仓库。然而,这些系统普遍存在两方面的不足,即(1)货架移动冗余,(2)不可避免的人工操作。为了克服这些不足,另一种解决方案是使用异构机器人(取货机器人和货运机器人)合作完成分拣任务。在这一领域,现有的工作大多集中在机器人的设计上,而目前还没有公开的文献(据我们所知)研究如何协调调度大量的取货机器人和货运机器人。为了填补这一空白,本文首先提出了一种协作算法来调度数百个异构机器人。该算法采用云-边缘终端架构,云负责分配任务和机器人,边缘计算单元监控各个区域的状态,终端(机器人)在边缘计算单元的引导下规划自己的路径,并通过竞价机制解决冲突。在大量仿真(多达330个机器人)的基础上,开发了仿真平台,分析了算法中几个关键组件的影响,验证了算法的优越性。
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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