截止日期感知的多代理旅行计划

Taoan Huang, Vikas Shivashankar, Michael Caldara, Joseph W. Durham, Jiaoyang Li, B. Dilkina, Sven Koenig
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引用次数: 3

摘要

对当日达服务的需求不断增加,以及电子商务公司对这项服务的承诺,给物流带来了许多挑战。配送中心面临的挑战之一是如何有效地协调自动化仓库中的数百个移动机器人,以便在承诺的交付期限内检索和包装数千件订购物品。我们将这一挑战定义为截止日期感知的多智能体旅行规划的新问题,其目标是协调机器人访问拥挤仓库中的多个取货站,以允许尽可能多的订单按时打包。为了解决这个问题,我们提出了基于截止日期感知的多智能体漫游规划(ROSETTA)的大邻域搜索。在KIVA系统的启发下,我们在模拟仓库中使用多达350个机器人进行了广泛的实验来评估ROSETTA。我们表明,与几种基准算法相比,它将按时完成的订单数量增加了38%,并且在吞吐量和站点利用率方面也显着优于它们。
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Deadline-Aware Multi-Agent Tour Planning
The increasing demand for same-day delivery and the commitment of e-commerce companies to this service raise a number of challenges in logistics. One of these challenges for fulfillment centers is to coordinate hundreds of mobile robots in their automated warehouses efficiently to allow for the retrieval and packing of thousands of ordered items within the promised delivery deadlines. We formulate this challenge as the new problem of deadline-aware multi-agent tour planning, where the objective is to coordinate robots to visit multiple picking stations in congested warehouses to allow as many orders to be packed on time as possible. To solve it, we propose LaRge NeighbOrhood Search for DEadline-Aware MulTi-Agent Tour PlAnning (ROSETTA). We conduct extensive experiments to evaluate ROSETTA with up to 350 robots in simulated warehouses inspired by KIVA systems. We show that it increases the number of orders completed on time by up to 38% compared to several baseline algorithms and also significantly outperforms them in terms of throughput and station utilization.
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