Journal ArticleOpen Access
Location optimization of EV charging stations: A custom K-means cluster algorithm approach
Authors
Author Affiliations
Chang'an University, Kaduna Polytechnic, Rangamati Science and Technology University
Published InEnergy Reports
Year2024
Citations34
Abstract
The strategic deployment of EV (EV) charging stations is crucial for promoting sustainable transportation and facilitating the widespread adoption of EVs. However, the lack of readily accessible charging station continues to be a significant barrier to the mainstream adoption of EVs. This study presents a comprehensive approach to optimizing the location of charging stations using a custom K-means clustering algorithm. The algorithm incorporates various factors including charging demand, energy consumption, population density, and existing stations, to identify optimal locations for the charging stations. The proposed methodology aims to minimize the distance between charging stations and areas with high EV demand while considering energy efficiency and avoiding redundancy near low-weighted point locations. The algorithm iteratively assigns data points to clusters and…
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