交期不确定、主订货成本可控的多产品随机联合补货问题建模与优化

Xue-Yi Ai, Jin Long Zhang, D. Song, Lin Wang
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引用次数: 1

摘要

本文通过考虑交货时间和有效投资的不确定性,将现有的随机联合补货模型推广到更现实的条件下,以降低主要订货成本。其目的是同时确定最优的严格循环补货策略和最优的主要订货成本,以使总成本最小化。目标成本函数通过将成本函数的一个元素表示为泰勒级数展开来近似。然后提出了一种基于边界的启发式算法来求解所提出的模型。通过计算实验验证了算法的性能和逼近的质量。在不考虑不确定性和降低订货成本的情况下,给出了模型的计算结果,说明了模型的有效性。实验和分析结果表明,交货时间的标准差对系统有显著影响。[收稿日期:2016年12月21日;修订日期:2017年7月29日;修订日期:2017年12月29日;修订日期:2018年9月30日;修订日期:2018年11月17日;录用日期:2019年1月26日]
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Modelling and optimising the multi-item stochastic joint replenishment problem with uncertain lead-time and controllable major ordering cost
In this paper, we extend the existing stochastic joint replenishment model to a more realistic condition by considering uncertainties in lead-time and effective investment to reduce the major ordering cost. The aim is to determine the optimal strict cyclic replenishment policy and the optimal major ordering cost simultaneously to minimise the total cost. The objective cost function is approximated by expressing one element of the cost function as a Taylor series expansion. A bounds-based heuristic algorithm is then developed to solve the proposed model. The performance of the algorithm and the quality of the approximation are examined by computational experiments. The results of the models without considering uncertainty and ordering cost reduction are presented to illustrate the effectiveness of the proposed model. Experimentation and analysis of results demonstrate that the standard deviation of lead-time has a significant effect on the system. [Received: 21 December, 2016; Revised: 29 July 2017; Revised: 29 December 2017; Revised: 30 September 2018; Revised: 17 November 2018; Accepted: 26 January 2019]
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