供应链
弹性(材料科学)
供应链风险管理
供应链管理
过程管理
意外事故
业务
应急计划
计算机科学
风险分析(工程)
服务管理
营销
计算机安全
语言学
热力学
物理
哲学
作者
Sachin Modgil,Shivam Gupta,Rébecca Stekelorum,Issam Laguir
出处
期刊:International Journal of Physical Distribution & Logistics Management
[Emerald (MCB UP)]
日期:2021-06-18
卷期号:52 (2): 130-149
被引量:142
标识
DOI:10.1108/ijpdlm-12-2020-0434
摘要
Purpose COVID-19 has pushed many supply chains to re-think and strengthen their resilience and how it can help organisations survive in difficult times. Considering the availability of data and the huge number of supply chains that had their weak links exposed during COVID-19, the objective of the study is to employ artificial intelligence to develop supply chain resilience to withstand extreme disruptions such as COVID-19. Design/methodology/approach We adopted a qualitative approach for interviewing respondents using a semi-structured interview schedule through the lens of organisational information processing theory. A total of 31 respondents from the supply chain and information systems field shared their views on employing artificial intelligence (AI) for supply chain resilience during COVID-19. We used a process of open, axial and selective coding to extract interrelated themes and proposals that resulted in the establishment of our framework. Findings An AI-facilitated supply chain helps systematically develop resilience in its structure and network. Resilient supply chains in dynamic settings and during extreme disruption scenarios are capable of recognising (sensing risks, degree of localisation, failure modes and data trends), analysing (what-if scenarios, realistic customer demand, stress test simulation and constraints), reconfiguring (automation, re-alignment of a network, tracking effort, physical security threats and control) and activating (establishing operating rules, contingency management, managing demand volatility and mitigating supply chain shock) operations quickly. Research limitations/implications As the present research was conducted through semi-structured qualitative interviews to understand the role of AI in supply chain resilience during COVID-19, the respondents may have an inclination towards a specific role of AI due to their limited exposure. Practical implications Supply chain managers can utilise data to embed the required degree of resilience in their supply chains by considering the proposed framework elements and phases. Originality/value The present research contributes a framework that presents a four-phased, structured and systematic platform considering the required information processing capabilities to recognise, analyse, reconfigure and activate phases to ensure supply chain resilience.
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