Assigning parcel destinations to drop‐off points in a congested robotic sorting system

Yuerong Chen, Xianhao Xu, Bipan Zou, René De Koster, Yeming Gong
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Abstract

Autonomous mobile robots are increasingly used for order picking, order delivery, and parcel sorting. This article studies a robotic sorting system that uses robots to transport parcels from loading stations to drop‐off points. While this system provides more flexible throughput capacity than conventional sorting systems, its performance is significantly affected by the robot travel distance and robot congestion. We study the problem of assigning parcel destinations to drop‐off points to minimize the throughput time, trading off travel distance and congestion. First, an open queuing network (OQN) with finite capacity queues is constructed to estimate the congested throughput time. A decomposition method based on the analysis of the tandem queuing network of each aisle is developed to solve the OQN. Second, using the obtained throughput time as an objective and the destination assignments as decisions, we formulate an optimization model and solve the problem using an adaptive large neighborhood search (ALNS) algorithm. We validate the accuracy of the OQN by simulation and verify the efficiency of the ALNS algorithm by comparing it with Gurobi, a tabu search algorithm, several heuristic assignment rules, and the rule used by our case company, that assigns high demands close to loading stations. The results show that the ALNS solution provides a relatively low throughput time by dispersing destinations with high demands over drop‐off points. In addition, we investigate the effects of different system layouts and travel path topologies. We also show that the ALNS assignment rule produces substantially lower operational costs than the heuristic assignment rules for a given required throughput capacity.
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在拥挤的机器人分拣系统中将包裹目的地分配到投放点
自主移动机器人越来越多地用于订单分拣、订单交付和包裹分拣。本文研究了一种机器人分拣系统,该系统使用机器人将包裹从装载站运送到投递点。与传统分拣系统相比,该系统具有更灵活的吞吐能力,但其性能受到机器人移动距离和机器人拥堵的严重影响。我们研究了将包裹目的地分配到投放点的问题,以最小化吞吐时间,同时权衡移动距离和拥堵问题。首先,我们构建了一个具有有限容量队列的开放式队列网络(OQN),以估算拥堵的吞吐时间。在分析每个通道的串联排队网络的基础上,开发了一种分解方法来求解 OQN。其次,以获得的吞吐时间为目标,以目的地分配为决策,我们建立了一个优化模型,并使用自适应大邻域搜索(ALNS)算法来解决该问题。我们通过仿真验证了 OQN 的准确性,并将 ALNS 算法与 Gurobi、tabu 搜索算法、几种启发式分配规则以及我们公司使用的规则(即在靠近装货站的地方分配高需求)进行了比较,从而验证了 ALNS 算法的效率。结果表明,ALNS 解决方案通过将需求量大的目的地分散到落客点上,实现了相对较低的吞吐时间。此外,我们还研究了不同系统布局和行驶路径拓扑结构的影响。我们还表明,在给定所需吞吐能力的情况下,ALNS 分配规则产生的运营成本大大低于启发式分配规则。
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