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优化众包拣货中的任务生成与分配

Optimizing Task Generation and Assignment in Crowdpicking

Production and Operations Management · 2025
被引 0
人大 AFT50UTD24ABS 4

中文导读

研究了利用店内顾客进行在线订单拣货的众包模型,通过机器学习实时分配任务并结合任务分解策略,降低拣货成本超20%,为零售管理者提供设计参考。

Abstract

As omnichannel operations become increasingly important for meeting diverse customer expectations in retail, continuous innovation in service and business models is essential to maintain a competitive edge. While effective order fulfillment is key to omnichannel success, the manual picking process in physical stores, one of the major driver of fulfillment costs, still offers substantial opportunities for improvement. This article focuses on the crowdpicking model as an innovative approach to manage online order picking operations in physical stores by leveraging existing in-store customers, offering a business model with considerable potential. We explore the real-time assignment of orders to in-store customers using machine learning to identify effective assignment policies. These policies are combined with a task-decomposition strategy to reduce picking costs and enhance crowdpicker participation as a key resource. The proposed crowdpicking model and its real-time management framework are tested on real-world data. Our results show that a well-managed crowdpicking system can lower order picking costs by more than 20% and provide actionable insights for managers in designing such systems.

零售运营管理机器学习众包