Theoretical approaches to AI in supply chain optimization: Pathways to efficiency and resilience

Emmanuel Adeyemi Abaku 1, *, Tolulope Esther Edunjobi 2 and Agnes Clare Odimarha 3

1 Gerald and Gerald Exchanges, Lagos, Nigeria.
2 Independent Researcher, London Ontario, Canada.
3 Shell, Nigeria.
 
Review
International Journal of Science and Technology Research Archive, 2024, 06(01), 092–107​.
Article DOI: 10.53771/ijstra.2024.6.1.0033
Publication history: 
Received on 31 January 2024; revised on 18 March 2024; accepted on 20 March 2024
 
Abstract: 
The integration of Artificial Intelligence (AI) into supply chain management has emerged as a pivotal avenue for enhancing efficiency and resilience in contemporary business operations. This paper explores various theoretical approaches to AI within the context of supply chain optimization, delineating pathways to achieve heightened performance and adaptability. Commencing with a historical overview, the paper delves into the evolution of AI techniques in supply chain management, elucidating how these methodologies have transformed the landscape of logistics and operations. Fundamental to this exploration is the discussion on mathematical modeling and algorithmic frameworks that underpin supply chain optimization, providing the theoretical foundation for subsequent AI applications. A key focus of the paper lies in the application of machine learning techniques for demand forecasting and inventory management, which leverage data-driven insights to optimize resource allocation and mitigate risks associated with supply-demand fluctuations. Additionally, network theory and graph algorithms play a crucial role in optimizing the structure and dynamics of supply chain networks, enabling efficient transportation, distribution, and inventory routing. Strategic decision-making in supply chains is addressed through the lens of game theory, which offers theoretical frameworks to model interactions among multiple stakeholders and optimize outcomes in competitive environments. Moreover, swarm intelligence and multi-agent systems provide innovative solutions for coordination and collaboration within complex supply chain ecosystems. Evolutionary algorithms and artificial neural networks are discussed as powerful tools for supply chain design, predictive analytics, and risk management, offering capabilities for optimizing decision-making processes across various operational domains. Furthermore, reinforcement learning techniques empower dynamic decision-making in real-time operational settings, fostering adaptive and resilient supply chain management practices. By integrating multiple AI techniques, hybrid approaches offer synergistic solutions that capitalize on the strengths of diverse methodologies to address multifaceted challenges in supply chain optimization. Through a synthesis of theoretical insights and practical case studies, this paper provides valuable insights into the current state and future directions of AI-driven supply chain optimization.
 
Keywords: 
AI; Supply Chain Optimization; Machine Learning; Game Theory; Swarm Intelligence; Reinforcement Learning.
 
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