AI in Supply Chain Risk Assessment: A Systematic Literature Review and Bibliometric Analysis
Md Abrar Jahin, Saleh Akram Naife, Anik Kumar Saha, and M. F. Mridha

TL;DR
This paper systematically reviews AI and machine learning applications in supply chain risk assessment, highlighting recent trends, influential research, and practical insights for enhancing supply chain resilience.
Contribution
It uniquely combines systematic literature review with bibliometric analysis to identify key AI models, trends, and research gaps in supply chain risk assessment.
Findings
ML models improve risk prediction accuracy
China and US are leading research hubs
Explainable AI enhances decision transparency
Abstract
Supply chain risk assessment (SCRA) is pivotal for ensuring resilience in increasingly complex global supply networks. While existing reviews have explored traditional methodologies, they often neglect emerging artificial intelligence (AI) and machine learning (ML) applications and mostly lack combined systematic and bibliometric analyses. This study addresses these gaps by integrating a systematic literature review with bibliometric analysis, examining 1,903 articles (2015-2025) from Google Scholar and Web of Science, with 54 studies selected through PRISMA guidelines. Our findings reveal that ML models, including Random Forest, XGBoost, and hybrid approaches, significantly enhance risk prediction accuracy and adaptability in post-pandemic contexts. The bibliometric analysis identifies key trends, influential authors, and institutional contributions, highlighting China and the United…
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Taxonomy
TopicsSupply Chain Resilience and Risk Management · Risk and Safety Analysis · Occupational Health and Safety Research
