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Seasonality Effect Analysis and Recognition of Charging Behaviors of Electric Vehicles: A Data Science Approach

机译:电动汽车充电行为的季节性效应分析与识别:一种数据科学方法

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摘要

Electric vehicles (EVs) presence in the power grid can bring about pivotal concerns regarding their energy requirements. EVs charging behaviors can be affected by several aspects including socio-economics, psychological, seasonal among others. This work proposes a case study to analyze seasonal effects on charging patterns, using a public real-world based dataset that contains information from the aggregated load of the total charging stations of Boulder, Colorado. Our approach targets to forecast and recognize EVs demand considering seasonal factors. Principal component analysis (PCA) was used to provide a visual representation of the variables and their contribution and the correlation among them. Then, twelve classification models were trained and tested to discriminate among seasons the charging load of electric vehicles. Later, a benchmark stage is presented for regression as well as for classification results. For regression models, examined through Mean Absolute Percentage Error (MAPE) and Root Mean Square Error (RMSE), the random Forest provides better prediction than quasi-Poisson model widely. However, it was observed that for large variations in electric vehicles’ charging load, quasi-Poisson fits better than random forest. For the classification models, evaluated through Accuracy and the Area under the Curve, the Lasso and elastic-net regularized generalized linear (GLMNET) model provided the best global performance with accuracy up to 100% when evaluated on the test dataset. The results of this work offer great insights for enhancing demand response strategies that involve PEV charging regarding charging habits across seasons.
机译:电网中的电动车(EVS)存在可以为其能量要求带来关键问题。 EVS充电行为可能受到若干方面的影响,包括社会经济,心理,季节性等。这项工作提出了一种案例研究,分析了对充电模式的季节性影响,使用包含来自科罗拉多州博尔德总收费站的聚合负荷的信息。考虑到季节性因素,我们的方法预测并认识到EVS需求。主要成分分析(PCA)用于提供变量的视觉表示及​​其贡献以及它们之间的相关性。然后,培训12种分类模型并测试以区分季节电动车辆的充电负荷。稍后,基准阶段被提出回归以及分类结果。对于回归模型,通过平均绝对百分比误差(MAPE)和均方根误差(RMSE)进行检查,随机森林广泛提供比准泊松模型更好的预测。然而,观察到,对于电动车辆充电负荷的大变化,准泊松比随机森林更好。对于分类模型,通过准确性和曲线下的区域进行评估,套索和弹性净正常化的广义线性(GLMNET)模型在测试数据集上评估时提供了最高可达100%的最佳全局性能。这项工作的结果提供了加强需求响应策略的良好见解,这些响应策略涉及对季节的充电习惯的PEV充电。

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