采用无监督分割模型对电动汽车行驶负荷进行分析,确定电池更换时间,评估行驶里程

T. Nguyen, Artur Mrowca, B. Moser, A. Jossen
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引用次数: 1

摘要

本贡献的目的是通过数据挖掘方法研究电动汽车的行驶负荷。电池组目前是这些汽车的主要成本驱动因素。因此,电池耐久性是在大众市场上经济地建立电动交通的重要杠杆。基于无监督聚类算法的分割建模方法,根据其历史分布评估宝马i3车辆的电池管理系统现场数据,如充电状态、温度和电流。聚类算法,由于其在机器学习和信息检索领域的频繁使用,能够分析大量的车辆数据,目的是将具有相似驾驶行为的车辆分组。使用计算各自轮廓系数的方法进一步验证了聚类分析,以评估聚类性能和输入参数的影响。直方图的分析总结了世界范围内最常见的驾驶员类型的定义。车辆集群可以进一步与电池老化相关联,以便找到合适的二次寿命应用,作为固定储能系统的一部分。
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Analysing the driving load on electric vehicles using unsupervised segmentation models as enabler to determine the time of battery replacement and assess driving mileage
The aim of this contribution is to study the driving load on electric vehicles through data mining methods. The battery pack is currently the major cost driver for these vehicles. Thus, battery durability is an important lever to economically establish electric mobility in the mass market. A segmentation modelling approach, based on unsupervised clustering algorithms, evaluates battery management system field data from BMW i3 vehicles such as state of charge, temperature and current in terms of their historical distribution. Clustering algorithms, due to their frequent use in the field of machine learning and information retrieval, are able to analyse big quantities of vehicle data with the aim to group vehicles with similar driving behaviour. The cluster analysis is further validated using the method of calculating respective silhouette coefficients to assess clustering performance and the influence of input parameters. The analysis of histograms concludes with the definition of the most common types of drivers worldwide. The vehicle clusters can further be correlated with battery ageing in order to find suitable 2nd life applications as part of stationary energy storage systems.
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