2019冠状病毒病与全球供应链风险缓解:使用科学计量技术的系统审查

Yudi Fernando, Mohammed Hammam Mohammed Al-Madani, M. S. Shaharudin
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引用次数: 0

摘要

本文旨在研究制造企业在2019冠状病毒病(COVID-19)期间和之后在全球供应链上如何降低业务风险。设计/方法/方法系统地回顾了数据挖掘的文献,以解决研究目标。多种科学计量学技术(如文献计量学、机器学习和社会网络分析)被用于分析Lens.org、Web of Science和Scopus数据库的全球供应链风险缓解数据。调查结果显示,这些公司的制造供应链使用了区块链、人工智能(AI)、3D打印和机器学习等数字化技术来缓解COVID-19。另一方面,粮食安全、政府激励和政策、卫生保健系统、能源和循环经济需要在全球供应链中进行更多的研究。实际意义建议全球供应链经理使用数字化技术来减轻当前和即将到来的中断。制造业供应链存在高度不确定性和不可预测的全球流行病。制造企业应考虑采用区块链技术、人工智能和机器学习,以减轻疫情风险和破坏。原创性/价值本研究发现了制造业企业如何在全球大流行和商业不确定性期间减轻全球供应链中断的出版趋势。调查结果有助于供应链风险缓解文献和解决方案框架。
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COVID-19 and global supply chain risks mitigation: systematic review using a scientometric technique
Purpose This paper aims to investigate how manufacturing firms behave to mitigate business risk during and post-COVID-19 coronavirus disease (COVID-19) on the global supply chain. Design/methodology/approach A systematic literature review for data mining was used to address the research objective. Multiple scientometric techniques (e.g. bibliometric, machine learning and social network analysis) were used to analyse the Lens.org, Web of Science and Scopus databases’ global supply chain risk mitigation data. Findings The findings show that the firms’ manufacturing supply chains used digitalisation technologies such as Blockchain, artificial intelligence (AI), 3D printing and machine learning to mitigate COVID-19. On the other hand, food security, government incentives and policies, health-care systems, energy and the circular economy require more research in the global supply chain. Practical implications Global supply chain managers were advised to use digitalisation technology to mitigate current and upcoming disruptions. The manufacturing supply chain has high uncertainty and unpredictable global pandemics. Manufacturing firms should consider adopting Blockchain technology, AI and machine learning to mitigate the epidemic risk and disruption. Originality/value This study found the publication trend of how manufacturing firms behave to mitigate the global supply chain disruptions during the global pandemic and business uncertainty. The findings have contributed to the supply chain risk mitigation literature and the solution framework.
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来源期刊
CiteScore
5.90
自引率
8.70%
发文量
57
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