风险分析(工程)
供应链
业务
供应链风险管理
风险管理
多样性(控制论)
意外事故
汽车工业
应急计划
风险评估
运营管理
供应链管理
精算学
计算机科学
营销
计算机安全
经济
财务
工程类
服务管理
语言学
哲学
航空航天工程
人工智能
作者
David Simchi‐Levi,William Schmidt,Yehua Wei,Peter Zhang,Keith Combs,Ge Yao,Oleg Gusikhin,Michael Sanders,Don C. Zhang
出处
期刊:Interfaces
[Institute for Operations Research and the Management Sciences]
日期:2015-10-01
卷期号:45 (5): 375-390
被引量:281
标识
DOI:10.1287/inte.2015.0804
摘要
Firms are exposed to a variety of low-probability, high-impact risks that can disrupt their operations and supply chains. These risks are difficult to predict and quantify; therefore, they are difficult to manage. As a result, managers may suboptimally deploy countermeasures, leaving their firms exposed to some risks, while wasting resources to mitigate other risks that would not cause significant damage. In a three-year research engagement with Ford Motor Company, we addressed this practical need by developing a novel risk-exposure model that assesses the impact of a disruption originating anywhere in a firm’s supply chain. Our approach defers the need for a company to estimate the probability associated with any specific disruption risk until after it has learned the effect such a disruption will have on its operations. As a result, the company can make more informed decisions about where to focus its limited risk-management resources. We demonstrate how Ford applied this model to identify previously unrecognized risk exposures, evaluate predisruption risk-mitigation actions, and develop optimal postdisruption contingency plans, including circumstances in which the duration of the disruption is unknown.
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