Two-stage stochastic programming for the inventory routing problem with stochastic demands in fuel delivery

IF 1.6 3区 工程技术 Q4 ENGINEERING, INDUSTRIAL
Zhenping Li, Pengbo Jiao
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引用次数: 1

Abstract

The inventory routing problem (IRP) arises in the joint practices of vendor-managed inventory (VMI) and vehicle routing problem (VRP), aiming to simultaneously optimize the distribution, inventory and vehicle routes. This paper studies the multi-vehicle multi-compartment inventory routing problem with stochastic demands (MCIRPSD) in the context of fuel delivery. The problem with maximum-to-level (ML) replenishment policy is modeled as a two-stage stochastic programming model with the purpose of minimizing the total cost, in which the inventory management and routing decisions are made in the first stage while the corresponding resource actions are implemented in the second stage. An acceleration strategy is incorporated into the exact single-cut Benders decomposition algorithm and its multi-cut version respectively to solve the MCIRPSD on the small instances. Two-phase heuristic approaches based on the single-cut decomposition algorithm and its multi-cut version are developed to deal with the MCIRPSD on the medium and large-scale instances. Comparing the performance of the proposed algorithms with the Gurobi solver within limited time, the average objective value obtained by the proposed algorithm has decreased more than 7.30% for the medium and large instances, which demonstrates the effectiveness of our algorithms. The impacts of the instance features on the results are further analyzed, and some managerial insights are concluded for the manager.
具有随机需求的燃油配送库存路径问题的两阶段随机规划
库存路径问题(IRP)是在供应商管理库存(VMI)和车辆路径问题(VRP)的结合实践中产生的,旨在同时优化配送、库存和车辆路径。研究了燃油配送环境下的多车多室随机需求库存路径问题。以总成本最小为目标,将最大到最大补货策略问题建模为两阶段随机规划模型,其中在第一阶段进行库存管理和路线决策,在第二阶段实施相应的资源行动。在精确单切口Benders分解算法和精确多切口Benders分解算法中分别加入加速策略,解决小实例上的MCIRPSD问题。提出了基于单切分解算法和多切分解算法的两阶段启发式方法来处理中大规模实例上的MCIRPSD问题。将本文算法与Gurobi求解器在限定时间内的性能进行比较,对于大中型实例,本文算法得到的平均目标值降低了7.30%以上,证明了算法的有效性。进一步分析了实例特征对结果的影响,并为管理者总结出一些管理启示。
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
CiteScore
5.70
自引率
9.10%
发文量
35
审稿时长
20 weeks
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