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首页> 外文期刊>Mathematical Problems in Engineering >Solving a Novel Inventory Location Model with Stochastic Constraints and (R, s, S) Inventory Control Policy
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Solving a Novel Inventory Location Model with Stochastic Constraints and (R, s, S) Inventory Control Policy

机译:求解具有随机约束和(R,s,S)库存控制策略的新型库存位置模型

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摘要

We solve a novel inventory-locationmodel with a stochastic capacity constraint based on a periodic inventory control (ILM-PR) policy. The ILM- PR policy implies several changes with regard to other previous models proposed in the literature, which consider continuous review as their inventory policy. One of these changes is the inclusion of the undershoot concept, which has not been considered in previous ILM models in the literature. Based on our model, we are able to design a distribution network for a two-level supply chain, addressing both warehouse location and customer assignment decisions, whilst taking into consideration several aspects of inventory planning, in particular, evaluating the impact of the inventory control review period on the network configuration and system costs. Because the model is a very hard-to solve combinatorial nonlinear optimisation problem, we implemented two heuristics to solve it, namely, Tabu Search and Particle Swarm Optimisation. These approaches were tested over small instances in which they were able to find the optimal solution in just a few seconds. Because the model is a new one, a set of medium-size instances is provided that can be useful as a benchmark in future research. The heuristics showed a good convergence rate when applied to those instances. The results confirm that decision making over the inventory control policy has effects on the distribution network design.
机译:我们基于周期库存控制(ILM-PR)策略解决了具有随机容量约束的新颖库存定位模型。与文献中提出的其他先前模型相比,ILM-PR政策暗示了一些变化,这些模型将持续审查视为其库存政策。这些变化之一是包含了下冲概念,文献中以前的ILM模型并未考虑过这一概念。基于我们的模型,我们能够为两级供应链设计一个分销网络,解决仓库位置和客户分配决策,同时考虑到库存计划的多个方面,尤其是评估库存控制的影响审查期间的网络配置和系统成本。由于该模型很难解决组合非线性优化问题,因此我们实施了两种启发式算法来解决它,即禁忌搜索和粒子群优化。这些方法在小型实例上进行了测试,在这些实例中,他们仅需几秒钟即可找到最佳解决方案。由于该模型是新模型,因此提供了一组中等大小的实例,这些实例可以用作将来研究的基准。当应用于这些实例时,启发式方法显示出良好的收敛速度。结果证实,库存控制策略的决策对分销网络的设计有影响。

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