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Application of machine learning on plan instability in master production planning of a semiconductor supply chain

机译:计划不稳定性的机器学习在半导体供应链主生产计划中的应用

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The progress of digitalization enables new potentials to supply chain management by available data as well as by analysis methods like machine learning. This paper focuses on the master production planning matching demand and supply for a midterm time horizon, in a volatile, diverse and capacity constrained environment. Therefore, a framework for measuring instability is outlined, a machine learning approach to predict instability is developed and applied using the CRISP-DM methodology on real data of a semiconductor manufacturer. The evaluation and results foster the concept and the field of application, but request the next step of prescriptive instability minimization.
机译:数字化的进展使现有的数据以及诸如机器学习之类的分析方法能够为供应链管理提供新的潜力。本文的重点是在动荡,多样化和产能受限的环境下,在中期时间范围内满足需求和供应的总体生产计划。因此,概述了用于测量不稳定性的框架,使用CRISP-DM方法开发了一种预测不稳定性的机器学习方法并将其应用于半导体制造商的真实数据。评估和结果促进了概念和应用领域,但要求将描述性不稳定性最小化的下一步。

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