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Home Electric Vehicle Charge Scheduling Using Machine Learning Technique

机译:基于机器学习技术的家用电动汽车充电调度

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With the help of artificial intelligence and advanced metering infrastructure (AMI), the analysis of electric vehicle integration will play a vital role in the future smart grid. Because getting data from smart appliances, processing that data using advanced techniques to get the desired output in near real-time is going to be a significant advantage of the smart grid. In this paper, a machine learning technique called support vector machine(SVM) is used to analyze the home charge scheduling. With the help of user energy consumption, electric vehicle SOC information at different time intervals, it can predict the status of the electric vehicle, i.e., Idle, Grid to Vehicle(G2V), or Vehicle to Grid(V2G) with close to cent percent accuracy. The results show the advantage of the SVM technique for analysis of home charge scheduling using intermediate EV data.
机译:借助人工智能和先进的计量基础设施(AMI),电动汽车集成分析将在未来的智能电网中发挥至关重要的作用。因为从智能设备中获取数据,所以使用先进技术处理数据以接近实时地获取所需输出将成为智能电网的一大优势。本文使用一种称为支持向量机(SVM)的机器学习技术来分析家庭充电调度。借助用户能源消耗,不同时间间隔的电动汽车SOC信息,它可以预测电动汽车的状态,即空闲,网格到车辆(G2V)或车辆到网格(V2G)的百分比接近准确性。结果表明,SVM技术的优点是可以使用中间EV数据来分析家庭充电计划。

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