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An ensemble methodology for hierarchical probabilistic electric vehicle load forecasting at regular charging stations

机译:定期充电站的分层概率电动车载预测的集合方法

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Transportation electrification is a valid option for supporting decarbonization efforts but, at the same time, the growing number of electric vehicles will produce new and unpredictable load conditions for the electrical networks. Accurate electric vehicle load forecasting becomes essential to reduce adverse effects of electric vehicle integration into the grid. In this paper, a methodology dedicated to probabilistic electric vehicle load forecasting for different geographic regions is presented. The hierarchical approach is applied to decompose the problem into sub-problems at low-level regions, which are resolved through standard probabilistic models such as gradient boosted regression trees, quantile regression forests and quantile regression neural networks, coupled with principal component analysis to reduce the dimensionality of the sub-problems. The hierarchical perspective is then finalized to forecast the aggregate load at a high-level geographic region through an ensemble methodology based on a penalized linear quantile regression model. This paper brings, as relevant contributions, the development of hierarchical probabilistic forecasting framework, its comparison with non-hierarchical frameworks, and the assessment of the role of data dimensionality refduction. Extensive experimental results based on actual electric vehicle load data are presented which confirm that the hierarchical approaches increase the skill of probabilistic forecasts up to 9.5% compared with non-hierarchical approaches.
机译:运输电气化是一种有效的选择,用于支持脱碳努力,但同时,越来越多的电动车辆将为电网产生新的和不可预测的负载条件。准确的电动车载预测变得必不可少,以减少电动车辆整合到网格中的不利影响。本文介绍了一种专用于不同地理区域的概率电动车载预测的方法。应用分层方法以将问题分解为低级区域的子问题,这些概率模型如梯度提升回归树,分位数回归林和分位数回归神经网络解决,与主要成分分析相结合,以减少子问题的维度。然后,最终确定分层视角,以通过基于惩罚的线性定位回归模型来预测高电平地理区域的聚合负载。本文作为相关贡献,将等级概率预测框架的发展为其与非分层框架的比较,以及数据维度简介的作用的评估。提出了基于实际电动车辆负载数据的广泛实验结果,其证实,与非分级方法相比,分层方法增加了概率预测的高达9.5%的技能。

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