A dynamic resilience management framework for deep-tier supply networks

IF 6.9 Q1 OPERATIONS RESEARCH & MANAGEMENT SCIENCE
Elham Taghizadeh, Saravanan Venkatachalam, Ratna Babu Chinnam
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引用次数: 0

Abstract

The unprecedented supply chain disruptions caused by COVID-19 has had severe operational and financial consequences to firms across industries and continents. While tactical reactionary strategies can help, firms are in need of proactive management approaches to design more resilient supply chain networks in the first place. Firms are looking for an effective framework to design and monitor supply networks, mitigate disruption consequences, and manage resilience under different scenarios. We propose a framework to manage the resilience of deep-tier automotive supply networks by integrating a simulation-based resilience assessment scheme for effectiveness with an efficient optimization-based framework to find optimal strategies for handling regular disruption events. The framework promotes network analysis techniques combined with discrete-event simulation informed by secondary data sources and global supply risk databases for improving resilience management. We validate the effectiveness of the proposed framework using a real-world global automotive original equipment manufacturer case study. Our results demonstrate that the proposed dynamic framework relying on deep-tier visibility can optimize resilience strategies through all key performance indicators. The results show an average of 35% and 40% reductions in back-ordered cost and shipment delays, respectively, with a marginal growth in holding cost when the proposed framework is implemented with deep-tier visibility.
深层供应网络的动态复原力管理框架
COVID-19 造成的前所未有的供应链中断给各行业和各大洲的企业带来了严重的运营和财务后果。虽然战术性的应对策略能起到一定作用,但企业首先需要的是积极主动的管理方法,以设计出更具弹性的供应链网络。企业正在寻找一个有效的框架来设计和监控供应网络,减轻中断的后果,并管理不同情况下的恢复能力。我们提出了一个管理深层汽车供应网络弹性的框架,它将基于模拟的弹性有效性评估方案与基于优化的高效框架相结合,以找到处理常规中断事件的最佳策略。该框架促进网络分析技术与离散事件仿真相结合,并通过二级数据源和全球供应风险数据库提供信息,以改善弹性管理。我们利用一个真实的全球汽车原始设备制造商案例研究验证了所提框架的有效性。我们的研究结果表明,所提出的动态框架依赖于深层可视性,能够通过所有关键性能指标优化弹性策略。结果表明,在利用深层可视性实施拟议框架时,滞销成本和装运延迟平均分别降低了 35% 和 40%,而持有成本则略有增长。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
8.60
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0.00%
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