Predicting real life electric vehicle fast charging session duration using neural networks

Anthony Deschenes, Jonathan Gaudreault, Claude-Guy Quimper
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Abstract

Predicting the time needed to charge an electric vehicle from X% to Y% is a difficult task due to the nonlinearity of the charging process and other external factors such as temperature and battery degradation. Using 28,000 real-life level 3 fast charging sessions from 15 different types of electric vehicles, we train models for this task. We compare learning models such as random forest, linear and seconddegree regressions, support vector regressions, and neural networks. The models take into consideration the external temperature, battery capacity, nominal capacity of the electric vehicle, number of charges made during the same day, maximum charging time allowed by the electric vehicle, target voltage, maximum voltage and maximum current asked by the electric vehicle. The models also take into consideration the vehicle type and the charging station type. We use a data augmentation technique (SMOTE) and hyperparameters optimization to enhance our model performances. The structure of the neural networks is optimized using Bayesian optimization. All models are trained and statistically compared in order to find the overall best model for all vehicle types. The overall best model is a neural network with a sub neural network pre-trained to predict the electric vehicle type.
基于神经网络的电动汽车快速充电持续时间预测
由于充电过程的非线性和其他外部因素(如温度和电池退化),预测电动汽车从X%充电到Y%所需的时间是一项艰巨的任务。我们使用来自15种不同类型的电动汽车的28000次现实生活中的3级快速充电,为这项任务训练模型。我们比较了随机森林、线性和二次回归、支持向量回归和神经网络等学习模型。这些模型考虑了外部温度、电池容量、电动汽车的标称容量、当天充电次数、电动汽车允许的最大充电时间、目标电压、最大电压和电动汽车要求的最大电流。模型还考虑了车辆类型和充电站类型。我们使用数据增强技术(SMOTE)和超参数优化来提高我们的模型性能。采用贝叶斯优化方法对神经网络结构进行优化。所有模型都经过训练并进行统计比较,以便找到所有车型的整体最佳模型。整体上最好的模型是一个神经网络和一个预训练的子神经网络来预测电动汽车的类型。
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