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Survival analysis in supply chains using statistical flowgraph models: Predicting time to supply chain disruption

机译:使用统计流程图模型进行供应链中的生存分析:预测供应链中断的时间

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摘要

Random events such as a production machine breakdown in a manufacturing plant, an equipment failure within a transportation system, a security failure of information system, or any number of different problems may cause supply chain disruption. Although several researchers have focused on supply chain disruptions and have discussed the measures that companies should use to design better supply chains, or study the different ways that could help firms to mitigate the consequences of a supply chain disruption, the lack of an appropriate method to predict time to disruptive events is strongly felt. Based on this need, this paper introduces statistical flowgraph models (SFGMs) for survival analysis in supply chains. SFGMs provide an innovative approach to analyze time-to-event data. Time-to-event data analysis focuses on modeling waiting times until events of interest occur. SFGMs are useful for reducing multistate models into an equivalent binary-state model. Analysis from the SFGM gives an entire waiting time distribution as well as the system reliability (survivor) and hazard functions for any total or partial waiting time. The end results from a SFGM helps to identify the supply chain's strengths, and more importantly, weaknesses. Therefore, the results are a valuable decision support for supply chain managers to predict supply chain behaviors. Examples presented in this paper demonstrate with clarity the applicability of SFGMs to survival analysis in supply chains.
机译:随机事件,例如制造工厂中的生产机器故障,运输系统内的设备故障,信息系统的安全故障或许多其他不同的问题,都可能导致供应链中断。尽管有几位研究人员专注于供应链中断,并讨论了公司应用来设计更好的供应链的措施,或研究了可以帮助公司减轻供应链中断后果的不同方法,但缺乏合适的方法来解决问题。强烈预测发生破坏性事件的时间。基于此需求,本文介绍了用于供应链中生存分析的统计流程图模型(SFGM)。 SFGM提供了一种创新的方法来分析事件时间数据。事件时间数据分析的重点是对直到感兴趣事件发生之前的等待时间建模。 SFGM对于将多状态模型简化为等效的二进制状态模型很有用。 SFGM的分析给出了整个等待时间分布以及系统的可靠性(幸存者)和危害功能,可用于全部或部分等待时间。 SFGM的最终结果有助于识别供应链的优势,更重要的是,识别劣势。因此,结果为供应链经理预测供应链行为提供了有价值的决策支持。本文介绍的示例清楚地说明了SFGM在供应链中的生存分析中的适用性。

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