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通过可解释机器学习对端到端半导体供应链中的中断进行评估

Disruption evaluation in end-to-end semiconductor supply chains via interpretable machine learning.

作者信息

Jaenichen Friedrich-Maximilian, Liepold Christina J, Ismail Abdelgafar, Schiffer Maximilian, Ehm Hans

机构信息

Infineon Technologies AG, Am Campeon 1-15, 85579 Neubiberg, Germany.

School of Management, Technical University of Munich, Arcisstr. 21, 80333 Munich, Germany.

出版信息

IFAC Pap OnLine. 2022;55(10):661-666. doi: 10.1016/j.ifacol.2022.09.479. Epub 2022 Oct 26.

Abstract

COVID-19 has posed unprecedented challenges to global health and the world economy. Two years into the pandemic, the widespread impact of COVID-19 continues to deepen, impacting different industries such as the automotive industry and its supply chain. This study presents a hybrid approach combining simulation modeling and tree-based supervised machine learning techniques to explore the implications of end-market demand disruptions. Specifically, we apply the concept of born-again tree ensembles, which are powerful and, at the same time, easily interpretable classifiers, to the case of the semiconductor industry. First, we show how to use born-again tree ensembles to explore data generated by a supply chain simulation model. To this end, we demonstrate the influence of varying behavioral and structural parameters and show the impact of their variation on specific key performance indicators, e.g., the inventory level. Finally, we leverage a counterfactual analysis to identify detailed managerial insights for semiconductor companies to mitigate adverse impacts on one echelon or the entire supply chain. Our hybrid approach provides a simulation model enhanced by a tree-based supervised machine learning model that companies can use to determine optimal measures for mitigating the adverse effects of end-market demand disruptions. We close the loop of our analysis by integrating the findings of the counterfactual analysis backward into the simulation model to understand the overall dynamics within the multi-echelon supply chain.

摘要

新冠疫情给全球健康和世界经济带来了前所未有的挑战。疫情爆发两年后,新冠疫情的广泛影响仍在不断加深,冲击着汽车行业及其供应链等不同行业。本研究提出了一种结合模拟建模和基于树的监督机器学习技术的混合方法,以探讨终端市场需求中断的影响。具体而言,我们将再生树集成的概念应用于半导体行业案例,再生树集成是强大且易于解释的分类器。首先,我们展示如何使用再生树集成来探索供应链模拟模型生成的数据。为此,我们展示了不同行为和结构参数的影响,并展示了它们的变化对特定关键绩效指标(如库存水平)的影响。最后,我们利用反事实分析为半导体公司确定详细的管理见解,以减轻对一个层级或整个供应链的不利影响。我们的混合方法提供了一个由基于树的监督机器学习模型增强的模拟模型,公司可以用它来确定减轻终端市场需求中断不利影响的最佳措施。我们通过将反事实分析的结果反向整合到模拟模型中,以了解多级供应链中的整体动态,从而完成我们的分析循环。

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