中国机械工程 ›› 2023, Vol. 34 ›› Issue (16): 1907-1914.DOI: 10.3969/j.issn.1004-132X.2023.16.003

• 机械基础工程 • 上一篇    下一篇

时频能量谱与 VGG16结合的车轮扁疤损伤程度估计方法

李大柱;牛江;梁树林;池茂儒
  

  1. 西南交通大学牵引动力国家重点实验室,成都,610031
  • 出版日期:2023-08-25 发布日期:2023-09-12
  • 通讯作者: 梁树林(通信作者),男,1967年生,教授级高级工程师。研究方向为车辆工程结构可靠性及动力学。E-mail:liangshulin@swjtu.edu.cn。
  • 作者简介:李大柱,男,1996年生,硕士研究生。研究方向为车辆智能运维。E-mail:1au_27345145539@163.com。
  • 基金资助:
    国家自然科学基金区域联合基金(U21A20168)

A Method for Estimating Damage Degree of Wheel Flat Scars Based on Time-frequency Energy Spectrum and VGG16

LI Dazhu;NIU Jiang;LIANG Shuling;CHI Maoru   

  1. State Key Laboratory of Traction Power,Southwest Jiaotong University,Chengdu,610031
  • Online:2023-08-25 Published:2023-09-12

摘要: 为了实现对运营中车辆车轮扁疤损伤程度的实时精准监测,提出了一种时频能量谱与VGG16卷积神经网络相结合的车轮扁疤损伤程度估计方法,该方法通过对车辆运营中轴箱振动加速度信号的分析处理来实时定量估计车轮扁疤的损伤程度。建立了车辆轨道刚柔耦合系统动力学模型和车轮扁疤数学模型,仿真计算不同扁疤损伤工况下的车辆轴箱振动响应。运用形态学滤波器以及完全噪声辅助集合经验模态分解结合Wigner-Ville分布的时频分析方法,将轴箱振动加速度信号滤波降噪后表达在时频能量谱中。构造了VGG16卷积神经网络模型,通过大量车轮扁疤故障数据的时频能量谱构造的训练集来训练VGG16模型。随机仿真若干车轮扁疤工况,对训练完善的VGG16模型进行测试验证。仿真试验表明,运用时频能量谱与VGG16模型结合的方法能准确地估计运营中车辆的车轮扁疤损伤程度,估计误差在1.6 mm内。

关键词: 车轮扁疤, 形态学滤波, 完全噪声辅助聚合经验模态分解, Wigner-Ville分布, VGG16, 时频能量谱

Abstract: In order to accurate monitoring of the damage degree of wheel flat scars of vehicles in operation, a method for estimating the damage degree of wheel flat scars was proposed based on the combination of time-frequency energy spectrum and VGG16 convolutional neural network. This method might quantitatively estimate the damage degree of wheel flat scars in real time by analyzing and processing the vibration acceleration signals of axle box during vehicle operation. The dynamics models of rigid flexible coupling system of vehicle tracks and the mathematical models of wheel flat scars were established to simulate the vibration response of the vehicle axle box under different flat scar damage conditions. Using morphological filter and CEEMDAN-WVD time-frequency analysis method, the vibration acceleration signals of the axle box were filtered and reduced, and then expressed in the time-frequency energy spectrum. The VGG16 convolutional neural network models were constructed, and the training sets were constructed by using the time-frequency energy spectrum of a large number of wheel flat scar fault data to train the VGG16 models. Several wheel flat scar conditions were randomly simulated and the VGG16 models were tested and verified. The simulation tests show that the method combining time-frequency energy spectrum with VGG16 models may accurately estimate the damage degree of wheel flat scars of vehicles in operation, and the estimation errors are within 1.6 mm. 

Key words: wheel flat scar, morphological filtering, complete ensemble empirical mode decomposition with adaptive noise (CEEMDAN), Wigner-Ville distribution(WVD), visual geometry group 16(VGG16), time-frequency energy spectrum

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