Gansterer Margaretha, Hartl Richard F, Wieser Sarah
Department for Business Decisions and Analytics, University of Vienna, Oskar-Morgenstern-Platz 1, 1090 Vienna, Austria.
Department of Operations, Energy, and Environmental Management, University of Klagenfurt, Universitätsstraße 65-67, 9020 Klagenfurt, Austria.
Ann Oper Res. 2021;305(1-2):513-539. doi: 10.1007/s10479-020-03522-x. Epub 2020 Jan 25.
Competitive markets, increased fuel costs, and underutilized vehicle fleets are characteristics that currently define the logistics sector. Given an increasing pressure to act in a manner that is economically and ecologically efficient, mechanisms that help to benefit from idle capacities are on the rise. In the Sharing Economy, collaborative usage is typically organized through platforms that facilitate the exchange of goods or services. Our study examines a collaborative pickup and delivery problem where carriers can exchange customer requests. The aim is to quantify the potential of horizontal collaborations under a centralized framework. An Adaptive Large Neighborhood Search is developed to solve yet unsolved test instances. A computational study confirms the results of past studies which have reported cost savings between 20 and 30%. In addition, the numerical results indicate an even greater potential for settings with a high degree of regional customer overlap. Unfortunately, these high collaborative gains typically come at the cost of an uneven customer distribution, which is known to be one of the main barriers that prevent companies from entering into horizontal collaborations. To generate acceptable solutions for all participants, several constraints are included in the model. The introduction of these constraints to single-vehicle instances, decreases the potential collaborative gain considerably. Surprisingly, this does not happen in more realistic settings of carriers operating multiple vehicles. Overall, the computational study shows that centralized collaborative frameworks have the potential to generate considerable cost savings, while at the same time limiting customer or profit share losses and enabling carriers to keep some of their most valued customers.
竞争激烈的市场、不断上涨的燃料成本以及未充分利用的车队,这些都是当前物流行业的特点。鉴于在经济和生态效率方面采取行动的压力不断增加,有助于从闲置产能中获益的机制正在兴起。在共享经济中,协作使用通常通过促进商品或服务交换的平台来组织。我们的研究考察了一个协作取送货问题,即承运人可以交换客户请求。目的是在集中式框架下量化横向协作的潜力。开发了一种自适应大邻域搜索算法来解决尚未解决的测试实例。一项计算研究证实了以往研究的结果,这些研究报告成本节约在20%至30%之间。此外,数值结果表明,在区域客户重叠程度较高的情况下,潜力更大。不幸的是,这些高协作收益通常是以客户分布不均为代价的,而客户分布不均是阻碍公司进行横向协作的主要障碍之一。为了为所有参与者生成可接受的解决方案,模型中纳入了几个约束条件。将这些约束条件引入单车实例中,会大幅降低潜在的协作收益。令人惊讶的是,在承运人运营多辆车的更现实场景中,情况并非如此。总体而言,计算研究表明,集中式协作框架有可能大幅节省成本,同时限制客户或利润份额损失,并使承运人能够留住一些最有价值的客户。