通过对真实电动汽车驾驶数据的聚类分析,生成地理空间上真实的驾驶模式

A. Pedersen, Andreas Aabrandt, J. Ostergaard, B. Poulsen
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引用次数: 7

摘要

为了提供一个真实地代表未来预测的电动汽车(EV)渗透率的车队,需要一个模拟人们驾驶行为的模型,而不是简单地回放收集到的数据。当焦点从传统的以用户为中心的智能充电方式扩展到以电网为中心时,突然之间,不仅要知道车辆何时充电、充电多少,还要知道它们在电网中的位置,这一点变得非常重要。由于电动汽车电网研究的主要目标之一是找到饱和点,因此模拟尺度同样重要,这需要一个统计上正确且灵活的模型。本文描述了一种基于非分类数据的电动汽车建模方法,该方法考虑了车辆的插电位置。通过聚类分析对车辆停放的主要位置进行外推和分类,利用相同分类的已知位置在地理上迁移模型。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Generating geospatially realistic driving patterns derived from clustering analysis of real EV driving data
In order to provide a vehicle fleet that realistically represents the predicted Electric Vehicle (EV) penetration for the future, a model is required that mimics people driving behaviour rather than simply playing back collected data. When the focus is broadened from on a traditional user-centric smart charging approach to be more grid-centric, it suddenly becomes important to know not just when- and how much the vehicles charge, but also where in the grid they plug in. Since one of the main goals of EV-grid studies is to find the saturation point, it is equally important that the simulation scales, which calls for a statistically correct, yet flexible model. This paper describes a method for modelling EV, based on non-categorized data, which takes into account the plug in locations of the vehicles. By using clustering analysis to extrapolate and classify the primary locations where the vehicles park, the model can be transferred geographically using known locations of the same classification.
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