Smart home devices and B2C e-commerce: a way to reduce failed deliveries

A. Seghezzi, R. Mangiaracina
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引用次数: 6

Abstract

PurposeFailed deliveries (i.e. deliveries not accomplished due to the absence of customers) represent a critical issue in B2C (Business-to-consumer) e-commerce last-mile deliveries, implying high costs for e-commerce players and negatively affecting customer satisfaction. A promising option to reduce them would be scheduling deliveries based on the probability to find customers at home. This work proposes a solution based on presence data (gathered through Internet of Things [IoT] devices) to organise the delivery tours, which aims to both minimise the travelled distance and maximise the probability to find customers at home.Design/methodology/approachThe adopted methodology is a multi-method approach, based on interviews with practitioners. A model is developed and applied to Milan (Italy) to compare the performance of the proposed innovative solution with traditional home deliveries (both in terms of cost and delivery success rate).FindingsThe proposed solution implies a significant reduction of missed deliveries if compared to the traditional operating mode. Accordingly, even if allocating the customers to time windows based on their availability profiles (APs) entails an increase in the total travel time, the average delivery cost per parcel decreases.Originality/valueOn the academic side, this work proposes and evaluates an innovative last-mile delivery (LMD) solution that exploits new AI (Artificial Intelligence)-based technological trends. On the managerial side, it proposes an efficient and effective novel option for scheduling last-mile deliveries based on the use of smart home devices, which has a significant impact in reducing costs and increasing the service level.
智能家居设备和B2C电子商务:减少配送失败的一种方式
配送失败(即由于没有客户而未能完成配送)是B2C(企业对消费者)电子商务最后一英里配送中的一个关键问题,这意味着电子商务参与者的成本很高,并对客户满意度产生负面影响。一个很有希望减少这种情况的选择是,根据在国内找到客户的可能性来安排送货时间。这项工作提出了一种基于现场数据(通过物联网[IoT]设备收集)的解决方案来组织送货旅行,其目的是最小化旅行距离并最大限度地提高在家中找到客户的可能性。设计/方法/方法采用的方法是基于对从业者的访谈的多方法方法。开发了一个模型,并将其应用于米兰(意大利),以比较所提出的创新解决方案与传统送货上门的性能(在成本和送货成功率方面)。研究结果与传统的操作模式相比,提出的解决方案意味着错过交货的显著减少。因此,即使根据客户的可用性配置文件(ap)将客户分配到时间窗口需要增加总旅行时间,每个包裹的平均交付成本也会降低。在学术方面,这项工作提出并评估了一种创新的最后一英里交付(LMD)解决方案,该解决方案利用了基于人工智能的新技术趋势。在管理方面,基于智能家居设备的使用,提出了一种高效、有效的最后一英里配送调度新方案,对降低成本、提高服务水平产生了重大影响。
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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