Machine Learning and Sustainable Logistics: Analyzing the Role of Optimization Algorithms in Supply Chain Management
DOI:
https://doi.org/10.5281/Keywords:
Machine Learning, Sustainable Logistics, Supply Chain Management, Optimization Algorithms, Sustainability, Operational Efficiency, Carbon Emissions, Genetic Algorithms, Neural Networks, Circular EconomyAbstract
In the modern business landscape, sustainability and operational efficiency are two pillars that drive competitive advantage. Supply chain management (SCM), a core aspect of logistics, is increasingly seen as pivotal in advancing sustainability initiatives while maintaining business viability. Machine learning (ML), with its wide array of optimization algorithms, offers innovative solutions to supply chain challenges, from minimizing carbon emissions to optimizing delivery routes. This paper explores the interplay between ML optimization techniques and sustainable logistics, examining how these technological advancements influence the structure and efficiency of supply chains. Through a deep dive into various optimization algorithms, including linear programming, genetic algorithms, and neural networks, the paper uncovers the mechanisms by which these techniques reduce waste, enhance energy efficiency, and foster circular economies. Furthermore, this research emphasizes the need for businesses to adopt sustainable practices, driven by the pressure of regulatory standards and consumer demand for eco-conscious products. By scrutinizing the impact of machine learning on the logistical side of the supply chain, the research showcases how businesses can leverage technology to achieve both sustainability and profitability.
References
[1] R. N. Boute and M. Udenio, "AI in logistics and supply chain management," in Global logistics and supply chain strategies for the 2020s: Vital skills for the next generation: Springer, 2022, pp. 49-65.
[2] C. S. Kodete, B. Thuraka, V. Pasupuleti, and S. Malisetty, "Determining the efficacy of machine learning strategies in quelling cyber security threats: Evidence from selected literatures," Asian Journal of Research in Computer Science, vol. 17, no. 8, pp. 24-33, 2024.
[3] C. S. Kodete, B. Thuraka, V. Pasupuleti, and S. Malisetty, "Hormonal Influences on Skeletal Muscle Function in Women across Life Stages: A Systematic Review," Muscles, vol. 3, no. 3, pp. 271-286, 2024.
[4] G. Elkady and A. Sedky, "Artificial Intelligence And Machine Learning For Supply Chain Resilience," Curr Integr Eng, vol. 1, pp. 23-28, 2023.
[5] V. Pasupuleti, B. Thuraka, C. S. Kodete, and S. Malisetty, "Enhancing supply chain agility and sustainability through machine learning: Optimization techniques for logistics and inventory management," Logistics, vol. 8, no. 3, p. 73, 2024.
[6] B. Thuraka, V. Pasupuleti, S. Malisetty, and K. O. Ogirri, "Leveraging artificial intelligence and strategic management for success in inter/national projects in US and beyond," Journal of Engineering Research and Reports, vol. 26, no. 8, pp. 49-59, 2024.
[7] S. Faramarzi-Oghani, P. Dolati Neghabadi, E.-G. Talbi, and R. Tavakkoli-Moghaddam, "Meta-heuristics for sustainable supply chain management: A review," International Journal of Production Research, vol. 61, no. 6, pp. 1979-2009, 2023.
[8] P. Whig, R. Remala, K. R. Mudunuru, and S. J. Quraishi, "Integrating AI and Quantum Technologies for Sustainable Supply Chain Management," in Quantum Computing and Supply Chain Management: A New Era of Optimization: IGI Global, 2024, pp. 267-283.
[9] N. Giuffrida, J. Fajardo-Calderin, A. D. Masegosa, F. Werner, M. Steudter, and F. Pilla, "Optimization and machine learning applied to last-mile logistics: A review," Sustainability, vol. 14, no. 9, p. 5329, 2022.
[10] M. Momenitabar, Z. D. Ebrahimi, and P. Ghasemi, "Designing a sustainable bioethanol supply chain network: A combination of machine learning and meta-heuristic algorithms," Industrial Crops and Products, vol. 189, p. 115848, 2022.
[11] M. Muthuswamy and A. M. Ali, "Sustainable supply chain management in the age of machine intelligence: addressing challenges, capitalizing on opportunities, and shaping the future landscape," Sustainable Machine Intelligence Journal, vol. 3, pp. (3): 1-14, 2023.
[12] A. C. Odimarha, S. A. Ayodeji, and E. A. Abaku, "Machine learning's influence on supply chain and logistics optimization in the oil and gas sector: a comprehensive analysis," Computer Science & IT Research Journal, vol. 5, no. 3, pp. 725-740, 2024.