Enhancing Sustainable Supply Chain Resilience Through Artificial Intelligence and Machine Learning: Industry 4.0 and Industry 5.0 in Manufacturing
Keywords:
Supply chains, Artificial intelligence, Machine learning, Sustainable supply chains, Resilience, Manufacture, Sustainable developmentSynopsis
With the global operating environment becoming rapidly more volatile, uncertain, complex, and ambiguous, supply chain resilience has risen to the top of the strategic agenda for organizations that want to not only survive but thrive amid disruptions from economic turmoil and digital transformation, and in general, rapid change. This book aims to provide an intelligible and powerful intelligent, adaptive, and human-centric supply chain as well as manufacturing systems enabled by emerging digital technologies. The move from Industry 4.0 to Industry 5.0 represents an important departure from the automation and connectedness of 4.0 to a next level of sustainability, resilience, and collaboration between people and machines. In this context, artificial intelligence (AI) and machine learning (ML) have become transformational enablers of supply chain resilience, providing predictive capabilities, autonomous decision-making, and data-driven optimization for intricate manufacturing networks. This work offers an exhaustive discussion on how AI and ML can be incorporated to design, manage, and operate supply chains that are not only more resilient but also better able to predict, withstand, and recover from the consequences of disruptions. Taking the reader step-by Step through the strategic journey of mining industry, and integrative coverage on key topics from risk assessment, decision making, inventory optimization, logistics to anomaly detection and sustainability, this work covers a gamut of areas, utilising technology, applications, and outcomes. We’ve tried to offer the best of theory and practice, both concepts and building-block approaches. The individual chapters are based on extensive research while being easily accessible to both practitioners and all those interested in the junction of AI/ML and supply chain management/smart manufacturing. We trust this book will be a useful reference guide for those looking to transform supply chain, digitally, build a sustainable, resilient and the future ready manufacturing ecosystem.
References
Sarkar P, Gunasekaran A, Patil HK. Survivability of supply chains in the era of Industry 4.0. Global Journal of Flexible Systems Management. 2025 Mar;26(1):225-46.
Guo D, Mantravadi S. The role of digital twins in lean supply chain management: review and research directions. International journal of production research. 2025 Mar 4;63(5):1851-72.
Musa SM, Haruna UA, Aliyu LJ, Zubairu M, Lucero-Prisno III DE. Leveraging AI to optimize vaccines supply chain and logistics in Africa: opportunities and challenges. Frontiers in Pharmacology. 2025 Feb 10;16:1531141.
Elkady G, Sedky AH. Artificial intelligence and machine learning for supply chain resilience. Current Integrative Engineering. 2023;1(1):23-8.
Al-Hourani S, Weraikat D. A Systematic Review of Artificial Intelligence (AI) and Machine Learning (ML) in Pharmaceutical Supply Chain (PSC) Resilience: Current Trends and Future Directions. Sustainability. 2025 Jul 19;17(14):6591.
Kalusivalingam AK, Sharma A, Patel N, Singh V. Enhancing Supply Chain Resilience through AI: Leveraging Deep Reinforcement Learning and Predictive Analytics. International Journal of AI and ML. 2022 Feb 23;3(9).
Shadkam E, Irannezhad E. A comprehensive review of simulation optimization methods in agricultural supply chains and transition towards an agent-based intelligent digital framework for agriculture 4.0. Engineering Applications of Artificial Intelligence. 2025 Mar 1;143:109930.
Riad M, Naimi M, Okar C. Enhancing supply chain resilience through artificial intelligence: developing a comprehensive conceptual framework for AI implementation and supply chain optimization. Logistics. 2024 Nov 6;8(4):111.
Beta K, Nagaraj SS, Weerasinghe TD. The role of artificial intelligence on supply chain resilience. Journal of Enterprise Information Management. 2025 Apr 3;38(3):950-73.
Modgil S, Singh RK, Hannibal C. Artificial intelligence for supply chain resilience: learning from Covid-19. The international journal of logistics management. 2022 Oct 17;33(4):1246-68.
            
						
 








