Electric Vehicle Drivetrain Efficiency and the Multi-Speed Transmission Question

IF 2.6 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC World Electric Vehicle Journal Pub Date : 2023-12-07 DOI:10.3390/wevj14120342
Stephan Lacock, Armand André du Plessis, M. J. Booysen
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Abstract

The availability of high-fidelity energy consumption estimates and the ability to evaluate drivetrain efficiency are crucial for effectively planning a large-scale transition to electric vehicles. For both new and retrofitted electric vehicles, a key question is the transmission type—single-speed or multi-speed—and the resulting impact on the vehicle’s overall efficiency. This paper presents a comprehensive simulation-based methodology for evaluating the impact of transmission selection on vehicle efficiency using high-fidelity driving cycle data. The method can be used for new vehicles and retrofit applications where a transmission is already present. The efficiency of a single-speed reduction gearbox was compared to that of a five-speed multi-speed transmission in a retrofitted vehicle, of which the impact of the manual transmission on the vehicle dynamics and efficiency was examined. The manual transmission proved to be more efficient for a perfect gear-shifting strategy.
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电动汽车动力传动系统的效率和多速变速器问题
高保真能源消耗估算的可用性和动力传动系统效率评估的能力对于有效规划大规模向电动汽车的过渡至关重要。对于新电动汽车和改装电动汽车来说,一个关键问题是变速器类型——单速还是多速——以及由此对车辆整体效率的影响。本文提出了一种基于仿真的综合方法,利用高保真驾驶循环数据来评估变速器选择对车辆效率的影响。该方法可用于新车辆和改造应用,其中变速器已经存在。以某改装车辆为例,对比了单速减速变速箱与五速多速变速箱的效率,考察了手动变速箱对车辆动力学和效率的影响。事实证明,对于完美的换挡策略来说,手动变速器效率更高。
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来源期刊
World Electric Vehicle Journal
World Electric Vehicle Journal Engineering-Automotive Engineering
CiteScore
4.50
自引率
8.70%
发文量
196
审稿时长
8 weeks
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