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Development of a Representative EV Urban Driving Cycle Based on a k-Means and SVM HybrClustering Algorithm

机译:基于k均值和SVM混合聚类算法的代表性EV城市行驶周期的开发。

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This paper proposes a scientific and systematic methodology for the development of a representative electric vehicle (EV) urban driving cycle. The methodology mainly includes three tasks: test route selection and data collection, data processing, and driving cycle construction. A test route is designed according to the overall topological structure of the urban roads and traffic flow survey results. The driving pattern data are collected using a hybrid method of on-board measurement method and chase car method. Principal component analysis (PCA) is used to reduce the dimensionality of the characteristic parameters. The driving segments are classified using a hybrid k-means and support vector machine (SVM) clustering algorithm. Scientific assessment criteria are studied to select the most representative driving cycle from multiple candidate driving cycles. Finally, the characteristic parameters of the Xi'an EV urban driving cycle, international standard driving cycles, and other city driving cycles are compared and analyzed. The results indicate that the Xi'an EV urban driving cycle reflects more aggressive driving characteristics than the other cycles.
机译:本文为发展具有代表性的电动汽车(EV)城市驾驶循环提出了一种科学而系统的方法。该方法主要包括三个任务:测试路线选择和数据收集,数据处理以及行驶周期构建。根据城市道路的总体拓扑结构和交通流量调查结果设计了一条测试路线。使用车载测量方法和追逐汽车方法的混合方法来收集驾驶模式数据。主成分分析(PCA)用于减少特征参数的维数。使用混合k均值和支持向量机(SVM)聚类算法对驾驶段进行分类。研究科学评估标准以从多个候选驾驶循环中选择最具代表性的驾驶循环。最后,对西安电动汽车城市行驶周期,国际标准行驶周期以及其他城市行驶周期的特征参数进行了比较和分析。结果表明,西安电动汽车的城市驾驶循环比其他循环反映出更具侵略性的驾驶特性。

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