The Capacitated Lot Sizing Problem with Batch Ordering: A MILP and Heuristic Approach

Gustavo Macedo-Barragán, Samuel Nucamendi-Guillén, E. O. Benítez, Omar G. Rojas
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Abstract

This article presents a mixed integer linear programming method and a heuristic algorithm to deal with the problem of multi-period, multiple-product batch purchases, with a finite time horizon, considering delivery times, order placement costs and independent batch size for each product. The objective of this problem is to minimize the costs of placing purchase orders and inventory. This problem is motivated by its application in a marketing company that handles the sale of fashion products (footwear and accessories) through catalogs and for which excess inventory represents a major problem given the short life cycle of its products. Experimental results show that the heuristic algorithm is able to obtain feasible solutions that improve in cost by up to 37% the best integer solutions reported by the model when it reaches the time limit. To validate the efficiency of the algorithm, a real scenario was solved for a trading company, obtaining results that improve by 28% compared to the current company’s situation. These results show that the heuristic approach is promising in terms of the quality of the solution and the computational time required.
批量排序的有容量批量问题:一种MILP和启发式方法
本文提出了一种混合整数线性规划方法和一种启发式算法来处理有限时间范围下的多周期、多产品批量采购问题,同时考虑了交货时间、下单成本和每个产品的独立批量大小。这个问题的目标是最小化下采购订单和库存的成本。这个问题的原因是它在一家营销公司的应用,该公司通过目录处理时尚产品(鞋类和配件)的销售,由于其产品的生命周期短,库存过剩是一个主要问题。实验结果表明,启发式算法在达到时间限制时,能够获得比模型报告的最佳整数解成本提高37%的可行解。为了验证算法的有效性,我们以一家贸易公司为例,求解了一个真实的场景,得到的结果比目前公司的情况提高了28%。这些结果表明,启发式方法在解的质量和所需的计算时间方面是有希望的。
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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