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Evaluating the energy consumption of electric vehicles based on car-following model under non-lane discipline

机译:非车道学科下基于跟车模型的电动汽车能耗评估

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The efficiency of energy consumption of a battery-powered electric vehicle (EV) is an important issue. This paper provides a comprehensive study on the effects of lateral gaps under non-lane discipline on the energy consumption for EV traffic stream by analyzing driving cycles produced by car-following models. In particular, the energy consumption model includes travel resistance power loss, motor power loss, regenerative braking power, and ancillary power loss. Then, three car-following models are implemented to evaluate the effects of lateral gaps: the FVD model with no lateral gap, the NLBCF model with one-sided lateral gap, and the TSFVD model with two-sided lateral gaps. Numerical experiments analyze three scenarios: start process, stop process, and evolution process for FVD model, NLBCF model, and TSFVD model, respectively. Simulation results demonstrate that, although EVs under the non-lane discipline recuperate more energy during the deceleration phase, they overall consume more energy than under lane-based discipline. This study highlights that the characteristic in terms of lateral distribution of traffic flow may lead to different energy consumption in EV traffic stream. This study also provides policy insights that regularizing lane discipline contributes to the improvement in energy efficiency.
机译:电池供电的电动汽车(EV)的能源消耗效率是一个重要的问题。本文通过分析跟车模型产生的驾驶循环,对非车道约束下横向间隙对电动汽车交通流能耗的影响进行了全面研究。特别地,能量消耗模型包括行驶阻力功率损耗,电动机功率损耗,再生制动功率和辅助功率损耗。然后,实施了三种跟车模型来评估横向间隙的影响:无横向间隙的FVD模型,具有一侧横向间隙的NLBCF模型以及具有两侧横向间隙的TSFVD模型。数值实验分析了FVD模型,NLBCF模型和TSFVD模型的三种情况:开始过程,停止过程和演化过程。仿真结果表明,尽管非车道规则下的电动汽车在减速阶段会回收更多的能量,但与基于车道规则下的电动车相比,它们总体上消耗更多的能量。这项研究强调,就交通流量的横向分布而言,该特性可能导致电动汽车交通流中的能源消耗不同。这项研究还提供了政策见解,认为规范车道纪律有助于提高能源效率。

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