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A CLUSTER ANALYSIS STUDY OF OPPORTUNE ADOPTION OF ELECTRIC DRIVE VEHICLES FOR BETTER GREENHOUSE GAS REDUCTION

机译:电动驱动车辆适当采用更好的温室气体的集群分析研究

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Adoption of electric drive vehicles (EDVs) presents an opportunity for reduction of greenhouse gas (GHG) emissions. From an individual vehicle standpoint however, the GHG reduction can vary significantly depending on the type of driving that the vehicle is used for. This is primarily due to conventional vehicles (CVs) having poor energy efficiency in stop-and-go city-like driving compared to their performance in steady highway-like driving. This study attempts to examine the magnitude of the differential in GHG reduction benefit for real driving behaviors obtained from California Household Travel Survey (CHTS-2013). Recorded vehicles speed traces are analyzed via a fuel economy simulator then a hybrid support vector clustering (SVC) technique is applied to form groups of vehicle samples with similar driving behaviors. Unlike many clustering techniques, SVC does not impose a pre-dictated number of clusters, but has a number of parameters that must be tuned in order to obtain meaningful results. Tuning of the parameters is performed via a multi-objective evolutionary algorithm (SPEA2) after formulating the cluster tuning as a two-objective problem that seeks to maximize: ⅰ) differential benefit in GHG reduction, and ⅱ) fraction of the population that groups of vehicles represent. Results show that replacing a CV with its equivalent hybrid (HEV) can reduce GHG emissions per mile of driving by 2 to 2.5 times more for a group of vehicles (best opportune for an EDV) compared to the less opportune group.
机译:采用电动车辆(EDV)为减少温室气体(GHG)排放提供了机会。然而,从单独的车辆观点来看,温室气体减少可以根据车辆用于车辆的驱动类型而显着变化。这主要是由于在稳定的高速公路驾驶中的止动城市的驾驶中的能量效率差的传统车辆(CVS)。本研究试图检查从加州家庭旅行调查获得的实际驾驶行为的温室气体减少效益中的差异差异(CHTS-2013)。记录的车辆速度迹线通过燃料经济性模拟器分析,然后施加混合支持向量聚类(SVC)技术以形成具有类似驾驶行为的车辆样本组。与许多聚类技术不同,SVC不施加预先描述的群集数,但具有必须调整的许多参数,以便获得有意义的结果。通过多目标进化算法(SPEA2)进行参数进行调整,在将群集调谐中制定为旨在最大化的两个客观问题:Ⅰ)在GHG减少中的差异益处,Ⅱ)群体的分数车辆代表。结果表明,与其相当于较少的群体的一组车辆(EDV的最佳合适),将CV更换CV,可以将温室气体排放量减少2至2.5倍。

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