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首页> 外文期刊>International journal of production economics >Integrated safety stock optimization for multiple sourced stockpoints facing variable demand and lead time
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Integrated safety stock optimization for multiple sourced stockpoints facing variable demand and lead time

机译:集成的安全库存优化,可针对面临可变需求和提前期的多个来源库存点

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摘要

The safety stock placement problem of a multi-stage supply chain comprising multiple sourced stockpoints is addressed in this paper. Each stockpoint faces variability in its downstream demand and suppliers' lead time. The maximum among these suppliers' lead time is determined by employing concepts of order statistics. It is required to find the fill rate and safety stocks at each stockpoint that leads to satisfying the end customer service level at minimum safety stock placement cost. Hence, the fill rates and the safety amounts are decided from a global supply chain perspective. Two models are proposed; a decentralized safety stock placement model and a centralized consolidation model. The decentralized model finds the safety amounts at each stockpoint required to face its underlying lead time demand variability. The consolidation model finds the consolidated safety amounts that will be kept in the relevant consolidation center at each stage. A Benders decomposition technique is developed to handle the nonlinearity and binary restrictions involved in the safety stock consolidation model. Strategies proposed by the consolidation model achieve 45.2-62% reduction in safety amounts that results in a cost savings ranging between 22.2-44.2% as compared to the strategies proposed by the decentralized model.
机译:本文解决了包含多个采购存货点的多阶段供应链的安全存货放置问题。每个库存点都面临着下游需求和供应商交货时间的变化。这些供应商的交货时间中的最大值是通过采用订单统计的概念来确定的。需要找到每个库存点的填充率和安全库存,以最低的安全库存放置成本满足最终客户服务水平。因此,从全球供应链的角度决定填充率和安全量。提出了两种模型;分散式安全库存放置模型和集中式合并模型。分散模型可以找到每个库存点的安全数量,以应对其潜在的提前期需求变化。合并模型查找合并的安全量,该安全量将在每个阶段保留在相关的合并中心中。开发了Benders分解技术来处理安全库存合并模型中涉及的非线性和二进制限制。合并模型提出的策略与分散模型提出的策略相比,实现了安全量减少45.2-62%的节省,从而节省了22.2-44.2%的成本。

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