汽车工业
风险分析(工程)
风险评估
供应链
供应链风险管理
风险管理
预警系统
业务
独创性
计算机科学
运营管理
操作风险
供应链管理
营销
工程类
计算机安全
定性研究
财务
电信
服务管理
社会学
航空航天工程
社会科学
作者
Jennifer Blackhurst,Kevin P. Scheibe,Danny J. Johnson
标识
DOI:10.1108/09600030810861215
摘要
Purpose This research aims to develop a supplier risk assessment methodology for measuring, tracking, and analyzing supplier and part specific risk over time for an automotive manufacturer. Design/methodology/approach Supply chain risk literature is analyzed and used in conjunction with interviews from the automotive manufacturer to identify risks in the supply base. These risks are incorporated into the development of a temporal risk assessment and monitoring system. Findings A framework of risk factors important to the auto manufacturer is presented. A multi‐criteria scoring procedure is developed to calculate part and supplier risk indices. These indices are used in the development of a risk assessment and monitoring system that allows the indices to be tracked over time to identify trends towards higher risk levels. Research limitations/implications There are a number of operational issues identified in the paper that could be investigated in future research. One such issue is the development of alternative risk assessment methods that would increase the sensitivity of the risk analysis. Practical implications The framework is implementable in firms interested in understanding and controlling risk in their supply base. The research stems from an industry project with an automotive manufacturer. The method is designed to be practical and easy to implement and maintain. The system also has a visual reporting mechanism designed to provide early warning signals for potential problems in the supply base and to show temporal changes in risk. Originality/value This paper presents a dynamic risk analysis methodology that analyzes and monitors supplier risk levels over time.
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