Intelligent Optimization Design of Green Logistics Supply Chain Network Considering Pollution Emission and Capacity Constraints

Intelligent Optimization Design of Green Logistics Supply Chain Network Considering Pollution Emission and Capacity Constraints

Authors

DOI:

https://doi.org/10.37965/jait.2025.0839

Keywords:

capacity, green logistics, Marine predators algorithm, multi-objective, Pollution discharge, supply chain

Abstract

Enhancing green supply chain network optimization is a key component to reduce carbon emissions and to improve resource efficiency. To balance the objectives of economic cost and environmental pollution, this study proposes a supply chain network design framework incorporating intelligent optimization algorithms. This study incorporates pollution emission and capacity constraints into the supply chain network design and designs a function model with the objective of minimizing operating costs. After that, the marine predators algorithm is improved for path decision-making and freight allocation, and the solution is stage tested and repaired. The results indicated that the average percentage deviation of the research method was less than 0.05% and the average processing time was less than 0.2 s. The method had better convergence and deconvergence stability than that of the forbidden search, Lagrangian relaxation, Gaussian improvement, and artificial neural network methods. The average values of running time and spacing index were 276 and 717. The research method can provide a reference for the cost savings of green logistics, which can help to realize the decision optimization and program adjustment under the goal of “double carbon.”

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Published

2025-10-29

How to Cite

Xu, X., & Roshayati Binti Abdul Hamid. (2025). Intelligent Optimization Design of Green Logistics Supply Chain Network Considering Pollution Emission and Capacity Constraints. Journal of Artificial Intelligence and Technology. https://doi.org/10.37965/jait.2025.0839

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Research Articles
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