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Fast demand forecast of Electric Vehicle Charging Stations for cell phone application

机译:手机用电动汽车充电站的快速需求预测

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This paper describes the core cellphone application algorithm which has been implemented for the prediction of energy consumption at Electric Vehicle (EV) Charging Stations at UCLA. For this interactive user application, the total time of accessing database, processing the data and making the prediction, needs to be within a few seconds. We analyze four relatively fast Machine Learning based time series prediction algorithms for our prediction engine: Historical Average, k-Nearest Neighbor, Weighted k-Nearest Neighbor, and Lazy Learning. The Nearest Neighbor algorithm (k Nearest Neighbor with k=1) shows better performance and is selected to be the prediction algorithm implemented for the cellphone application. Two applications have been designed on top of the prediction algorithm: one predicts the expected available energy at the station and the other one predicts the expected charging finishing time. The total time, including accessing the database, data processing, and prediction is about one second for both applications.
机译:本文介绍了已在UCLA的电动汽车(EV)充电站进行能耗预测的核心手机应用算法。对于此交互式用户应用程序,访问数据库,处理数据和进行预测的总时间需要在几秒钟之内。我们为预测引擎分析了四种相对较快的基于机器学习的时间序列预测算法:历史平均,k最近邻,加权k最近邻和惰性学习。最近邻居算法(k最近邻居,k = 1)显示出更好的性能,并被选择作为为手机应用实现的预测算法。在预测算法的基础上设计了两种应用程序:一种预测车站的预期可用能量,另一种预测预期的充电完成时间。对于这两个应用程序,包括访问数据库,数据处理和预测在内的总时间约为一秒钟。

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