众包最后一英里配送

Soraya Fatehi, M. Wagner
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引用次数: 18

摘要

问题定义:由于电子商务的出现和发展,客户要求更快更便宜的送货服务。然而,许多零售商发现有效地为客户提供快速、及时的送货服务是一项挑战。学术/实践意义:亚马逊(Amazon)和沃尔玛(Walmart)是依赖独立人群司机来应对按需配送预期的零售商之一。方法:提出了一种新颖的鲁棒众包优化模型,用于研究具有保证交付时间窗口的按需订单的众包最后一英里配送系统的劳动力规划和定价。我们通过结合众包、鲁棒排队和鲁棒路由理论来开发我们的模型。通过分析研究在客户需求、人群可用性、服务时间和交通模式不确定的情况下,如何利用独立的人群司机提供快速和有保证的配送服务,我们展示了鲁棒优化方法的价值;我们也考虑到这些不确定性的趋势和季节性。结果:对于给定的交付时间窗口和准时交付保证水平,我们的模型允许我们分析得出最优交付分配给可用的独立人群司机和他们的最优小时工资。我们的研究结果表明,众包可以帮助企业大幅降低配送成本,同时保持对客户的准时配送承诺。管理意义:我们提供了广泛的管理见解和指导方针,如何在实践中实施这样一个系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Crowdsourcing Last-Mile Deliveries
Problem definition: Because of the emergence and development of e-commerce, customers demand faster and cheaper delivery services. However, many retailers find it challenging to efficiently provide fast and on-time delivery services to their customers. Academic/practical relevance: Amazon and Walmart are among the retailers that are relying on independent crowd drivers to cope with on-demand delivery expectations. Methodology: We propose a novel robust crowdsourcing optimization model to study labor planning and pricing for crowdsourced last-mile delivery systems that are utilized for satisfying on-demand orders with guaranteed delivery time windows. We develop our model by combining crowdsourcing, robust queueing, and robust routing theories. We show the value of the robust optimization approach by analytically studying how to provide fast and guaranteed delivery services utilizing independent crowd drivers under uncertainties in customer demands, crowd availability, service times, and traffic patterns; we also allow for trend and seasonality in these uncertainties. Results: For a given delivery time window and an on-time delivery guarantee level, our model allows us to analytically derive the optimal delivery assignments to available independent crowd drivers and their optimal hourly wage. Our results show that crowdsourcing can help firms decrease their delivery costs significantly while keeping the promise of on-time delivery to their customers. Managerial implications: We provide extensive managerial insights and guidelines for how such a system should be implemented in practice.
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