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面向COVID-19疫情供应链中断建模的多层贝叶斯网络方法

A multi-layer Bayesian network method for supply chain disruption modelling in the wake of the COVID-19 pandemic

International Journal of Production Research · 2021
被引 151 · 同刊同年前 7%
ABS 3

中文导读

提出一种多层贝叶斯网络模型,用于识别和量化COVID-19疫情下供应链中断的触发因素及对财务绩效和业务连续性的影响,为管理者提供决策支持。

Abstract

While the majority of companies anticipated the negative and severe impacts of the COVID-19 pandemic on the supply chains (SC), most of them lacked guidance on how to model disruptions and their performance impacts under pandemic conditions. Lack of such guidance resulted in delayed reactions, incomplete understanding of pandemic impacts, and late deployment of recovery actions. In this study, we offer a method of modelling and quantifying the SC disruption impacts in the wake of a pandemic. We develop a multi-layer Bayesian network (BN) model that can be used to identify SC disruption triggers and risk events amid the COVID-19 pandemic and quantify the consequences of pandemic disruptions. The unique features of BN, such as forward and backward propagation analysis, are utilised to simulate and measure the impact of different triggers on SC financial performance and business continuity. In this way, we combine resilience and viability SC perspectives and explicitly account for the pandemic settings. The outcomes of this research open a novel theoretical lens on application of BNs to SC disruption modelling in the pandemic setting. Our results can be used as a decision-support tool to predict and better understand the pandemic impacts on SC performance.

供应链管理贝叶斯网络风险管理运营管理疫情应对