论文标题
供应商选择的多项目库存批量问题的扩展配方和有效的不平等问题
Extended formulation and valid inequalities for the multi-item inventory lot-sizing problem with supplier selection
论文作者
论文摘要
我们考虑供应商选择的多项目库存批号问题。该问题包括确定最佳购买计划,以满足有限规划范围内多个项目的动态确定性要求,考虑到多个供应商可以从中购买。由于问题的复杂性是一个悬而未决的问题,我们表明它是NP-HARD。我们为问题提出了一个设施位置的扩展配方,该设施可以根据成本结构进行预处理,并描述变量原始空间中的新有效不平等。此外,我们研究了扩展配方对原始空间的投影,并显示了该预测产生的不平等与新提出的不平等现象之间的联系。此外,我们提出了一种易于实现的且非常有效的MIP(混合整数编程)启发式启发式,并使用扩展配方。此外,我们介绍了两套新的基准集实例,以评估不同成本结构下的方法的性能。计算结果表明,预处理方法可以显着降低要解决的公式的大小,从而增加了在时间限制内求解为最佳性的实例数量的增加,也可以减少解决方案的平均时间。此外,所描述的不平等值可以改善几乎所有实例组的标准公式的性能。它们还可以用于为某些大型实例提供强大的下限,而预处理设施的位置配方甚至由于记忆限制而无法提供线性放松。此外,提出的MIP启发式效果优于文献中可用的启发式方法,因为它获得了解决方案值,至少与所有实例组报告的值相匹配,从而严格改善了大多数实例组。
We consider the multi-item inventory lot-sizing problem with supplier selection. The problem consists of determining an optimal purchasing plan in order to satisfy dynamic deterministic demands for multiple items over a finite planning horizon, considering that multiple suppliers are available to purchase from. As the complexity of the problem was an open question, we show that it is NP-hard. We propose a facility location extended formulation for the problem which can be preprocessed based on the cost structure and describe new valid inequalities in the original space of variables. Furthermore, we study the projection of the extended formulation into the original space and show the connection between the inequalities generated by this projection and the newly proposed inequalities. Additionally, we present a simple and easy to implement yet very effective MIP (mixed integer programming) heuristic using the extended formulation. Besides, we introduce two new benchmark sets of instances to assess the performance of the approaches under different cost structures. Computational results show that the preprocessing approach can significantly reduce the size of the formulation to be solved, allowing both an increase in the number of instances solved to optimality within the time limit and a reduction on the average time to solve them. Moreover, the described inequalities can improve the performance of a standard formulation for nearly all instance groups. They can also be used to provide strong lower bounds for certain large instances for which the preprocessed facility location formulation fails even to provide a linear relaxation bound due to memory limitations. Furthermore, the proposed MIP heuristic outperforms the heuristics available in the literature as it obtains solution values which at least match those reported for all instance groups, strictly improving most of them.