预测电动汽车充电站的可用性和充电速率

Can Bikcora, N. Refa, L. Verheijen, S. Weiland
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引用次数: 14

摘要

为了实现更好的智能充电解决方案,本文研究了插电式电动汽车充电站可用性和充电速率的日前概率预测。具有逻辑链接函数的广义线性模型是这两种预测情景的核心。另外,充电点的可用性预测是一个简单的二项问题,而充电率预测是通过对可行范围进行分类后的有序逻辑模型来处理的。这两种情况是根据从荷兰占用最多的充电点的两个代表收集的真实数据进行评估的,分析的重点是选择基本回归量。根据2015年最后9个月的前日预测的排序概率得分,得出预测模型的有效性高度依赖于充电站的结论。当对性能有很大贡献时,这些模型具有简单的结构,只有几个基本的滞后变量和指示变量。
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Prediction of availability and charging rate at charging stations for electric vehicles
To enable better smart charging solutions, this paper investigates the day-ahead probabilistic forecasting of the availability and the charging rate at charging stations for plug-in electric vehicles. Generalized linear models with logistic link functions are at the core of both forecast scenarios. Moreover, the availability forecast at a charging point is simply a binomial problem, whereas the charging rate forecast is handled via an ordered logistic model after categorizing the feasible range of values. These two scenarios are evaluated on real data collected from two representatives of the most occupied charging points in the Netherlands, with the focus of the analysis kept at the selection of essential regressors. Based on the ranked probability scores associated with the day-ahead forecasts generated for the last nine months of 2015, it is concluded that the usefulness of predictive models depends highly on the charging station. When contributing substantially to performance, such models possess a simple structure with a few basic lagged and indicator variables.
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