电动汽车充电站拥堵预测的优化Bi-LSTM机器学习模型

Energy Storage Pub Date : 2025-07-09 DOI:10.1002/est2.70216
Sourav Sarkar, Jenson Narzary, Debasis Chaterjee, Amarjit Roy, Chiranjit Sain, Anubav Agarwal, F. Ahmad
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引用次数: 0

摘要

随着电动汽车(ev)的普及,对高效可靠的充电基础设施的需求日益增加。本文提出了一种基于双向长短期记忆(Bi LSTM)的电动汽车充电站拥堵预测与管理模型。利用Bi LSTM网络在处理顺序数据方面的先进功能,我们的模型分析历史和实时数据以预测拥堵程度。LSTM的双向特性允许对数据进行全面分析,从过去和未来的上下文中捕获依赖关系。该模型旨在为用户和运营商提供实时信息,增强决策流程,优化收费资源利用。通过提供准确的拥堵预测,基于Bi lstm的模型有助于站点部署和用户导航的战略规划,最终提高充电基础设施的整体效率。实验结果表明,该模型能够准确预测拥塞,显著减少等待时间,提高用户满意度。这项研究强调了先进的机器学习技术,特别是Bi LSTM网络在解决电动汽车充电站管理的动态挑战方面的潜力。这种预测模型的实施是朝着智能、高效和以用户为中心的电动汽车充电生态系统发展的关键一步。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An Optimized Bi-LSTM Machine Learning Model for Predicting Congestion at Electric Vehicle Charging Stations

The proliferation of electric vehicles (EVs) has intensified the need for efficient and reliable charging infrastructure. This study introduces a bidirectional long short-term memory (Bi LSTM)-based model designed to predict and manage congestion at EV charging stations. Leveraging the advanced capabilities of Bi LSTM networks in handling sequential data, our model analyzes historical and real-time data to forecast congestion levels. The bidirectional nature of the LSTM allows for a comprehensive analysis of the data, capturing dependencies from both past and future contexts. The proposed model aims to provide real-time intimation to both users and operators, enhancing decision-making processes and optimizing the utilization of charging resources. By offering accurate predictions of congestion, the Bi LSTM-based model facilitates strategic planning for station deployment and user navigation, ultimately improving the overall efficiency of the charging infrastructure. Experimental results demonstrate the model's efficacy in accurately predicting congestion, significantly reducing wait times, and improving user satisfaction. This research underscores the potential of advanced machine learning techniques, particularly Bi LSTM networks, in addressing the dynamic challenges of EV charging station management. The implementation of such predictive models is a crucial step toward the development of a smart, efficient, and user-centric EV charging ecosystem.

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