基于集群的单仓库选址路径电子商务物流问题的数学优化模型

Alireza Amini, Michael Haughton
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引用次数: 1

摘要

本研究针对最后一英里配送电子商务环境中的两级位置-路线问题提出了一个数学优化模型。这家电子商务公司在家里或通过配送点满足每位客户的需求。当车辆到达客户家中时,他们可能无法联系到客户。在这种情况下,车辆必须访问为不可用客户分配的交付点。从所有在场的客户到所有缺席的客户有几种情况。为了降低模型的复杂性,提出了一个包含六个不等式的数学模型。此外,引入了两种场景缩减方法来处理场景数量的指数增长。我们生成了12个数值实例来评估模型的性能、场景约简方法和所提出的不等式。该模型生成有效的解决方案。此外,场景减少方法通过减少场景数量和降低管理不可用客户场景的复杂性,有助于电子商务环境中的决策者。
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A mathematical optimization model for cluster-based single-depot location-routing e-commerce logistics problems

This study proposes a mathematical optimization model for a two-echelon location-routing problem in the last-mile delivery e-commerce environment. The e-commerce firm delivers each customer’s demand at home or through delivery points. Customers could be unavailable when the vehicle arrives at their homes. In this case, the vehicle must visit the allocated delivery points for the unavailable customer. There are several scenarios from all-present to all-absent customers. A mathematical model is proposed with six inequalities to reduce the model’s complexity. In addition, two scenario reduction methods are introduced to deal with the exponential growth of the number of scenarios. We generate twelve numerical instances to evaluate the performance of the model, the scenario reduction methods, and the proposed inequalities. The model produces valid solutions. Also, the scenario reduction methods are helpful for decision-makers in the e-commerce context by reducing the number of scenarios and decreasing the complexity of managing unavailable customer scenarios.

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