Human-Centric Parcel Delivery at Deutsche Post with Operations Research and Machine Learning

IF 1.1 4区 管理学 Q4 MANAGEMENT
Uğur Arıkan, Thorsten Kranz, Baris Cem Sal, Severin Schmitt, Jonas Witt
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Abstract

Features such as estimated delivery time windows and live tracking of shipments play a key role in improving the customer experience in last-mile delivery. The building blocks for enabling these features are reliable knowledge about the expected order of deliveries in a tour and precise delivery time window predictions. For Deutsche Post’s parcel delivery service in Germany, we developed a courier-centric routing algorithm and a corresponding state-of-the-art machine learning model for delivery time window predictions. The routing algorithm combines operations research with statistics and machine learning to implicitly gather and use the tacit knowledge of our experienced couriers within the tour generation. This is achieved by deducing and selecting appropriate precedence constraints from historical delivery data. This novel combination of optimization with data-driven constraints enabled us to provide custom routes to the individual couriers. It proved to be a main driver allowing us to provide accurate delivery time window predictions and live tracking of shipments. Our solution is used by Deutsche Post to plan the daily routes of couriers to the approximately 13,000 parcel delivery districts in Germany as well as to provide live tracking and estimated delivery time windows for 1.6 million parcels each day. History: This paper has been accepted for the INFORMS Journal on Applied Analytics Special Issue—2022 Daniel H. Wagner Prize for Excellence in the Practice of Advanced Analytics and Operations Research.
德国邮政以人为中心的包裹递送,运用运筹学和机器学习
预计交货时间窗口和实时货物跟踪等功能在改善最后一英里交货的客户体验方面发挥着关键作用。支持这些特性的构建块是关于旅行中预期交付顺序的可靠知识和精确的交付时间窗口预测。对于德国邮政的包裹递送服务,我们开发了一个以快递员为中心的路由算法和一个相应的最先进的机器学习模型,用于投递时间窗口预测。路由算法将运筹学与统计学和机器学习相结合,隐式地收集和使用我们在旅行一代中经验丰富的快递员的隐性知识。这是通过从历史交付数据中推断和选择适当的优先约束来实现的。这种优化与数据驱动约束的新颖结合使我们能够为个人快递员提供定制路线。事实证明,它是一个主要的驱动因素,使我们能够提供准确的交货时间窗口预测和实时跟踪货物。德国邮政使用我们的解决方案来规划快递员前往德国约13,000个包裹投递区的每日路线,并每天为160万个包裹提供实时跟踪和估计投递时间窗口。历史:本文已被INFORMS应用分析杂志特刊- 2022年Daniel H. Wagner高级分析和运筹学实践优秀奖所接受。
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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来源期刊
自引率
21.40%
发文量
51
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