集群定向问题的紧凑模型

Logistics Pub Date : 2024-05-06 DOI:10.3390/logistics8020048
R. Montemanni, Derek H. Smith
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引用次数: 0

摘要

背景:集群定向问题是最后一英里物流中面临的一个优化问题。其目的是在给定的时间窗口内,访问顶点并在给定时间内尽可能多地收集利润。要访问的顶点必须从一组服务请求中选出。具体来说,顶点属于一个群组,利润与群组相关联,只有访问了一个群组的所有顶点,才能收集到相对于群组的价格。任何能提供更好解决方案的求解方法都意味着向可持续物流迈出了新的一步,因为公司可以依靠更高效的配送模式,而这反过来又与城市环境的改善相关联,由于最后一英里配送流得到了优化和控制,对居民和管理部门都有好处。方法在本文中,我们针对该问题提出了一个约束编程模型,并通过使用开箱即用的软件对其进行求解,对新模型的潜力进行了实证评估。结果:结果表明,与文献中现有的精确方法相比,我们提出的新方法更胜一筹。此外,在比较新模型与定制方法所获得的启发式解决方案的质量时,可以发现新模型具有良好的性能。更详细地说,报告了许多新的已知最优解成本上限,并首次求解了几个最优实例。结论本文为有效处理最后一英里物流中常见的优化问题提供了一种新的实用且易于实施的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Compact Model for the Clustered Orienteering Problem
Background: The Clustered Orienteering Problem is an optimization problem faced in last-mile logistics. The aim is, given an available time window, to visit vertices and to collect as much profit as possible in the given time. The vertices to visit have to be selected among a set of service requests. In particular, the vertices belong to clusters, the profits are associated with clusters, and the price relative to a cluster is collected only if all the vertices of a cluster are visited. Any solving methods providing better solutions also imply a new step towards sustainable logistics since companies can rely on more efficient delivery patterns, which, in turn, are associated with an improved urban environment with benefits both to the population and the administration thanks to an optimized and controlled last-mile delivery flow. Methods: In this paper, we propose a constraint programming model for the problem, and we empirically evaluate the potential of the new model by solving it with out-of-the-box software. Results: The results indicate that, when compared to the exact methods currently available in the literature, the new approach proposed stands out. Moreover, when comparing the quality of the heuristic solutions retrieved by the new model with those found by tailored methods, a good performance can be observed. In more detail, many new best-known upper bounds for the cost of the optimal solutions are reported, and several instances are solved to optimality for the first time. Conclusions: The paper provides a new practical and easy-to-implement tool to effectively deal with an optimization problem commonly faced in last-mile logistics.
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