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汽车安全与节能学报 ›› 2026, Vol. 17 ›› Issue (2): 200-208.DOI: 10.3969/j.issn.1674-8484.2026.02.005

• 汽车安全 • 上一篇    下一篇

商用车传动轴疲劳寿命数据驱动预测与多参数优化

刘祥1(), 殷玉明1,*(), 吴植文1, 丁孝禹1, 徐华福2, 高佳庆2, 杨大胜3   

  1. 1 浙江工业大学杭州 310023, 中国
    2 钱潮传动轴有限公司杭州 311200, 中国
    3 清华大学 苏州汽车研究院苏州 215223, 中国
  • 收稿日期:2025-12-03 修回日期:2026-02-25 出版日期:2026-04-30 发布日期:2026-04-30
  • 通讯作者: 殷玉明,副教授。E-mail:yinyuming@zjut.edu.cn
  • 作者简介:刘祥(2002—),男(汉),四川,本科。E-mail:17759983353@163.com
  • 基金资助:
    智能绿色车辆与交通全国重点实验室开放基金课题(KFY2414)

Data-driven prediction and multi-parameter optimization of fatigue life of commercial vehicle drive shafts

LIU Xiang1(), YIN Yuming1,*(), WU Zhiwen1, DING Xiaoyu1, XU Huafu2, GAO Jiaqing2, YANG Dasheng3   

  1. 1 Zhejiang University of Technology, Hangzhou 310023, China
    2 Qianchao Transmission Shaft Co., Ltd., Hangzhou 311200, China
    3 Suzhou Automotive Research Institute, Tsinghua University, Suzhou 215223, China
  • Received:2025-12-03 Revised:2026-02-25 Online:2026-04-30 Published:2026-04-30

摘要:

为高效且精确地预测与优化车辆传动轴总成的疲劳寿命,提出一种数据驱动方法。以实验测试与有限元分析为基础,利用深度神经网络对关键零部件参数进行优化设计。通过应变实验验证了传动轴总成有限元模型的可靠性,并据此建立了可靠的疲劳寿命计算模型;基于该模型构建了不同载荷与空间夹角等安装条件的疲劳寿命数据集;利用深度神经网络提取特征构建疲劳寿命预测模型;为进一步优化结构寿命,选取了7个关键零部件的近40个设计尺寸构建多参数数据集,基于该神经网络预测模型对关键参数进行协同优化设计。结果表明:经多参数协同优化后,传动轴的整体疲劳寿命显著提升了22.6%,该数据驱动方法能快速、准确地预测并有效优化传动轴疲劳寿命。

关键词: 商用车传动轴, 疲劳寿命预测, 数据驱动, 参数优化

Abstract:

A data-driven method was proposed to efficiently and accurately predict and optimize the fatigue life of vehicle drive shaft assemblies. Based on experimental testing and finite element analysis (FEA), a deep neural network (DNN) was utilized to optimize the parameters of key components. The reliability of the finite element model for the drive shaft assembly was verified through strain testing, based on which a reliable fatigue life calculation model was established. Subsequently, a fatigue life dataset under various installation conditions of different loads and spatial installation angles was constructed with the model. A DNN was then employed to extract features and construct a fatigue life prediction model. To further optimize the structural life, a multi-parameter dataset was constructed by selecting nearly 40 design dimensions from 7 key components, and a collaborative optimization of the key parameters was conducted based on the DNN prediction model. The results show that the overall fatigue life of the drive shaft assembly is significantly improved by 22.6% after the multi-parameter collaborative optimization. The proposed data-driven method can rapidly and accurately predict, as well as effectively optimize, the fatigue life of drive shafts.

Key words: commercial vehicle driveshaft, fatigue life prediction, data-driven, parameter optimization

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