School of Automobile, Chang'an University, Xi'an, China.
Environ Sci Pollut Res Int. 2019 May;26(14):13839-13853. doi: 10.1007/s11356-018-3541-6. Epub 2018 Nov 7.
This paper develops a methodology for constructing a representative electric vehicle (EV) urban driving cycle as a basis for studying the differences in estimated energy consumption, taking Xi'an as an example. The test route is designed in accordance with the overall topological structure of the urban roads in the study region and the results of a traffic flow survey. Wavelet decomposition and reconstruction are utilized to preprocess the original data. Principal component analysis (PCA) is used to reduce the number of the kinetic parameters. The fuzzy C-means (FCM) clustering algorithm is used to cluster the driving segments. A representative EV urban driving cycle is constructed in accordance with the time proportions of three classes of driving segments and the correlation coefficients of the characteristic parameters. Finally, the differences in energy consumption estimates obtained using the constructed Xi'an EV urban driving cycle (XA-EV-UDC) and the international driving cycles are studied. The comparison shows that when international driving cycles are used to estimate the energy consumption and driving range of EVs, large relative errors will result, with energy consumption errors of 9.65 to 21.17% and driving range errors of 20.10 to 38.14%. Therefore, to accurately estimate energy consumption and driving range of EVs under real-world driving conditions, representative EV driving cycles for each typical city and region should be constructed.
本文开发了一种构建具有代表性的电动汽车(EV)城市行驶循环的方法,以便研究估计能耗的差异,以西安为例。测试路线是根据研究区域城市道路的整体拓扑结构和交通流量调查结果设计的。利用小波分解和重构对原始数据进行预处理。利用主成分分析(PCA)减少运动参数的数量。利用模糊 C 均值(FCM)聚类算法对行驶片段进行聚类。根据三类行驶片段的时间比例和特征参数的相关系数,构建具有代表性的电动汽车城市行驶循环。最后,研究了使用构建的西安电动汽车城市行驶循环(XA-EV-UDC)和国际行驶循环得到的能耗估计的差异。比较表明,当使用国际行驶循环来估计电动汽车的能耗和行驶里程时,会产生较大的相对误差,能耗误差为 9.65%至 21.17%,行驶里程误差为 20.10%至 38.14%。因此,为了在实际驾驶条件下准确估计电动汽车的能耗和行驶里程,应该为每个典型城市和地区构建具有代表性的电动汽车行驶循环。