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A Deep Reinforcement Learning Approach for Optimal Replenishment Policy in A Vendor Managed Inventory Setting For Semiconductors

机译:用于半导体供应商管理库存设置中最佳补充策略的深度增强学习方法

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Vendor Managed Inventory (VMI) is a mainstream supply chain collaboration model. Measurement approaches defining minimum and maximum inventory levels for avoiding product shortages and over-stocking are rampant. No approach undertakes the responsibility aspect concerning inventory level status, especially in semiconductor industry which is confronted with short product life cycles, long process times, and volatile demand patterns. In this work, a root-cause enabling VMI performance measurement approach to assign responsibilities for poor performance is undertaken. Additionally, a solution methodology based on reinforcement learning is proposed for determining optimal replenishment policy in a VMI setting. Using a simulation model, different demand scenarios are generated based on real data from Infineon Technologies AG and compared on the basis of key performance indicators. Results obtained by the proposed method show improved performance than the current replenishment decisions of the company.
机译:供应商托管库存(VMI)是一个主流供应链协作模型。测量方法定义最低和最大库存水平,以避免产品短缺和过度放养的是猖獗的。没有办法承担有关库存水平状态的责任方面,特别是在半导体行业中,这些行业面临着短的产品寿命周期,长的过程时间和挥发性需求模式。在这项工作中,开展了一种根本原因,使VMI性能测量方法能够为糟糕性能分配责任。另外,提出了一种基于增强学习的解决方法,用于在VMI设置中确定最佳补充策略。使用仿真模型,基于Infineon Technologies AG的实际数据生成不同的需求方案,并根据关键绩效指标进行比较。通过该方法获得的结果表明,比公司的当前补充决策有所改善。

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