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A Load Spectrum Data based Data Mining System for Identifying Different Types of Vehicle Usage of a Hybrid Electric Vehicle Fleet

机译:基于负载频谱数据的数据挖掘系统,用于识别混合动力电动车船队的不同类型的车辆使用

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In order to achieve high customer satisfaction and to avoid high warranty costs caused by component failures of the power-train of hybrid electric vehicles (HEV), car manufacturers have to optimize the dimensioning of these elements. Hence, it is obligatory for them to gain knowledge about the different types of vehicle usage being predominant all over the world. Therefore, in this paper we present a Data Mining system that employs a Random Forest (RF) based dissimilarity measure in the dimensionality reduction technique t-Distributed Stochastic Neighbor Embedding (t-SNE) to automatically identify and visualize different types of vehicle usage by applying these methods to aggregated logged on-board data, i.e., load spectrum data. This kind of data is calculated and recorded directly on the control units of the vehicles and consists of aggregated numerical data, like the histogram of the velocity signal or the traveled distance of a vehicle. We empirically demonstrate the performance of the proposed Data Mining system by carrying out a real-world case study using load spectrum data of a HEV fleet, containing the logged on-board data of 6670 passenger cars. The results show that the system is able to learn from approximately 700 variables, which describe the usage of each vehicle, a two- or three-dimensional embedding, making it possible to visualize the different types of vehicle usage.
机译:为了实现高客户满意度,避免由混合动力电动汽车动力线(HEV)的组件故障引起的高保修费用,汽车制造商必须优化这些元素的尺寸。因此,他们有义务了解有关各种类型的车辆用法占世界各地的不同类型的车辆使用。因此,在本文中,我们介绍了一种数据挖掘系统,该系统采用基于随机森林(RF)基于维林(RF)的嵌入(T-SNE)的D分布式随机邻居,以通过施用自动识别和可视化不同类型的车辆使用这些方法汇总登录的登录数据,即加载频谱数据。这种数据被计算并直接记录在车辆的控制单元上,并且由聚合的数值数据组成,如速度信号的直方图或车辆的行驶距离。我们通过使用HEV舰队的负载频谱数据进行现实世界案例研究,经验证明了所提出的数据挖掘系统的性能,其中包含6670辆乘用车的登录数据。结果表明,该系统能够从大约700个变量中学习,这描述了每个车辆的使用,两个或三维嵌入,使得可以可视化不同类型的车辆使用。

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