Optimization of Electric Vehicle Drivetrain Fluid with a New System-Level Approach.

IF 2.2 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Tribology Transactions Pub Date : 2025-05-19 eCollection Date: 2025-01-01 DOI:10.1080/10402004.2025.2488799
Joseph F Shore, Amir Kadiric
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引用次数: 0

Abstract

This paper uses a newly developed tribology-based system-level transmission efficiency model to investigate the influence of e-fluid properties on electric vehicle (EV) drivetrain losses. The model considers gear meshing losses using a thermally-coupled mixed friction prediction, bearing losses using existing models, and gear churning using a new experimentally-derived regression equation. The key advantages of the approach are: (i) it is a system-level approach that accounts for the interdependency of different sources of losses by predicting the evolution of temperature distribution in the entire electric drive unit (EDU) including the transmission, e-motor and heat exchanger; (ii) it can discriminate between two oils of the same specification in terms of their impact on overall losses by using measured lubricant rheology; and (iii) it predicts total energy loss over any vehicle duty cycle. The model is validated by comparing its temperature predictions to in-situ measurements made on a real EV in a series of road tests. Application of the model to a typical modern EV shows that it is possible to identify an optimum e-fluid viscosity for minimum transmission losses over any given drive cycle. The exact value of this optimum strongly depends on vehicle duty: it is higher for a city cycle such as the New York City Cycle (NYCC), which has low average speed and frequent start-stops, conditions where gear tooth friction is shown to dominate, and lower for highway driving or the worldwide harmonized light-duty vehicles test cycle (WLTC), where bearing losses dominate. The presented approach provides an efficient tool for optimization of lubricant selection and EDU design.

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基于系统级新方法的电动汽车传动系统流体优化。
本文采用新建立的基于摩擦学的系统级传动效率模型,研究了电液特性对电动汽车传动系统损耗的影响。该模型使用热耦合混合摩擦预测考虑齿轮啮合损失,使用现有模型考虑轴承损失,使用新的实验推导的回归方程考虑齿轮搅拌。该方法的主要优点是:(i)它是一种系统级方法,通过预测包括变速器、电动机和热交换器在内的整个电力驱动单元(EDU)的温度分布演变,来解释不同损耗源的相互依赖性;(ii)它可以区分两种相同规格的油,就其对总体损失的影响而言,使用测量的润滑剂流变学;(3)预测车辆在任何工作周期内的总能量损失。通过将模型预测的温度与一辆真实电动汽车在一系列道路测试中的现场测量结果进行比较,验证了模型的有效性。该模型在典型现代电动汽车上的应用表明,在任何给定的驱动循环中,都可以确定最小传动损失的最佳e-流体粘度。这个最优值的确切值在很大程度上取决于车辆的负荷:对于城市循环,如纽约市循环(NYCC),它具有较低的平均速度和频繁的启停,在齿轮齿摩擦占主导地位的条件下,它较高;对于高速公路驾驶或全球统一轻型车辆测试循环(WLTC),它较低,轴承损失占主导地位。该方法为润滑油的优选和EDU设计提供了有效的工具。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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来源期刊
Tribology Transactions
Tribology Transactions 工程技术-工程:机械
CiteScore
3.90
自引率
4.80%
发文量
82
审稿时长
4 months
期刊介绍: Tribology Transactions contains experimental and theoretical papers on friction, wear, lubricants, lubrication, materials, machines and moving components, from the macro- to the nano-scale. The papers will be of interest to academic, industrial and government researchers and technologists working in many fields, including: Aerospace, Agriculture & Forest, Appliances, Automotive, Bearings, Biomedical Devices, Condition Monitoring, Engines, Gears, Industrial Engineering, Lubricants, Lubricant Additives, Magnetic Data Storage, Manufacturing, Marine, Materials, MEMs and NEMs, Mining, Power Generation, Metalworking Fluids, Seals, Surface Engineering and Testing and Analysis. All submitted manuscripts are subject to initial appraisal by the Editor-in-Chief and, if found suitable for further consideration, are submitted for peer review by independent, anonymous expert referees. All peer review in single blind and submission is online via ScholarOne Manuscripts.
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