太阳能电动汽车电池交换站优化充电的机器学习控制器

Nandakishore M N, Trapti Jain
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引用次数: 0

摘要

在电动汽车时代,电池交换站(BSS)通过提供快速、可靠、便捷的解决方案,帮助电动汽车车主和充电站运营商克服电动汽车的续驶里程焦虑、充电时间长、成本高等问题,发挥着重要作用。如果这些电池交换站使用可再生能源,并集成优化的充电基础设施,对电动汽车用户和充电站运营商来说,这可以实现零碳、可靠、方便和经济。本文设计并分析了一种基于模式识别网络的太阳能电池充电预测器和控制器。案例研究选择了从佐治亚理工大学校园收集的开放数据集。利用PVSyst、Homer grid、MATLAB/ Simulink进行了仿真分析,结果表明,该方法对电池健康充电率的预测准确率达到83%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Machine Learning Controller for Optimised Charging in Solar Power Fed EV Battery Swapping Stations
In this era of electric vehicles, battery swapping stations (BSS) have a significant role as they help EV owners and station operators by providing fast, reliable, and convenient solutions to overcome driving range anxiety, high charging time, and high cost of electric vehicles. If these battery swapping stations are fed with renewable energy sources, and an optimized charging infrastructure is integrated to it, this can be made zero-carbon, reliable, convenient, and economical for EV users and station operators. In this work, the authors designed and analyzed a solar power fed battery swapping station, with pattern recognition network-based predictor and controller for charging its batteries. An open dataset collected from the Georgia Tech University campus is selected for the case study. Simulation analysis is carried out using PVSyst, Homer grid, MATLAB/ Simulink, and the results show 83% accuracy in predicting healthy charging rates of the batteries.
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