供应链网络中设施选址的可解释决策模型

Tin-Chih Toly Chen , Yu-Cheng Wang , Yi-Chi Wang
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引用次数: 0

摘要

为满足客户需求而选择合适的工厂位置是半导体供应链管理中的一个新兴课题。然而,这个话题还没有得到彻底的研究。因此,本研究提出一种可解释的人工智能(XAI)解释模糊群体决策(FGDM)方法,以协助晶圆代工公司选择合适的工厂位置,以满足客户需求的产能本地化。xai解释的FGDM方法旨在克服现有可视化工具和技术在解释设施选址过程中的缺点。为此,提出了几种新的可视化工具和方法,包括悬挂梯度条形图、梯度双向散点图和用于可追溯聚合的悬挂梯度条形图。在将XAI解释的FGDM方法应用于实际案例后,新的XAI工具增强了设施选址过程和结果的可解释性。与现有的XAI工具相比,优势高达36% %。此外,Shapley加性解释(SHAP)分析结果表明,对评价结果影响最大的因素可能与领域专家的原始判断不一致。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An explainable decision model for selecting facility locations in supply chain networks
Suitable facility location selection for customer-required capacity localization is an emerging topic in semiconductor supply chain management. However, this topic has not been thoroughly investigated. For this reason, an explainable artificial intelligence (XAI)-interpreted fuzzy group decision-making (FGDM) approach is proposed in this study to assist a wafer foundry company in selecting suitable facility locations for customer-required capacity localization. The XAI-interpreted FGDM approach aims to overcome the shortcomings of existing visualization tools and techniques for explaining the facility location selection process. To this end, several new visualization tools and methods have been proposed, including hanging gradient bar charts, gradient bidirectional scatterplots, and hanging gradient bar charts for traceable aggregation. After applying the XAI-interpreted FGDM approach to a real case, the new XAI tools enhanced the explainability of the facility location selection process and results. The advantage over the existing XAI tools was up to 36 %. In addition, Shapley additive explanations (SHAP) analysis results showed that the factors that impact the assessment results most may be inconsistent with the original judgments of domain experts.
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