Artificial Intelligence-Driven Optimization of Electric Vehicle Charging Networks: An Integrated Framework for Sustainable Supply Chain Operations

Authors

  • Abdul Muqtadir Mohammed University at Buffalo, USA Author

DOI:

https://doi.org/10.32628/CSEIT251112206

Keywords:

Artificial Intelligence, Electric Vehicle Charging, Supply Chain Optimization, Multi-agent Neural Networks, Sustainable Transportation Infrastructure

Abstract

This article presents an innovative framework for optimizing electric vehicle charging networks in supply chain operations through artificial intelligence-driven solutions. The article addresses critical challenges in EV fleet management by integrating advanced neural networks, blockchain technology, and Internet of Things architecture to create a comprehensive charging optimization system. The framework incorporates multi-agent learning algorithms, real-time data processing, and smart grid integration to enhance operational efficiency and sustainability. Through extensive experimental validation and real-world implementations, the article demonstrates significant improvements in charging optimization, energy cost reduction, and environmental impact mitigation. The proposed system leverages sophisticated sensor networks, edge computing capabilities, and dynamic pricing mechanisms to achieve superior performance compared to traditional charging management approaches. This article contributes to the advancement of sustainable transportation infrastructure by developing practical solutions that can be implemented across diverse operational environments while maintaining high reliability and user satisfaction levels.

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References

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Published

07-02-2025

Issue

Section

Research Articles