• CN:11-2187/TH
  • ISSN:0577-6686

机械工程学报 ›› 2017, Vol. 53 ›› Issue (6): 102-109.doi: 10.3901/JME.2017.06.102

• 运载工程 • 上一篇    下一篇

基于高阶谱特征提取的高速列车车轮擦伤识别算法研究*

赵蓉, 史红梅   

  1. 北京交通大学机械与电子控制工程学院 北京 100044
  • 出版日期:2017-03-20 发布日期:2017-03-20
  • 作者简介:赵蓉,女,1991年出生。主要研究方向为轨道交通安全检测技术。E-mail:14121366@bjtu.edu.cn史红梅(通信作者),女,1973年出生,博士,副教授,博士研究生导师。主要研究方向为轨道交通安全检测技术。E-mail:hmshi@bjtu.edu.cn
  • 基金资助:
    * 国家自然科学基金重点资助项目(61134003); 20160319收到初稿,20160823收到修改稿;

Research on Wheel-flat recognition Algorithm for High-speed Train Based on High-order Spectrum Feature Extraction

ZHAO Rong, SHI Hongmei   

  1. School of Mechanical, Electrical Control Engineering, Beijing Jiaotong University, Beijing 100044
  • Online:2017-03-20 Published:2017-03-20

摘要:

随着列车运行速度和轴重增加,车轮踏面擦伤现象不断加剧。提出一种对列车经过时钢轨振动信号进行高阶谱特征提取并结合粒子群-支持向量机(PSO-SVM)进行车轮擦伤识别的算法。通过建立车辆轨道垂向耦合模型和车轮擦伤模型,计算正常车轮与擦伤车轮作用下的钢轨振动响应。利用高阶谱方法对两种情况下钢轨振动信号进行信号处理得到二维等高线图和三维双谱图,通过灰度-梯度共生矩阵提取其二维等高线图的6个纹理特征,与车速共同输入PSO-SVM模型识别车轮是否擦伤;再结合三维双谱图对角切片峰值、二维等高线图内扩对角频率,对擦伤等级进行识别。结果表明:利用高阶谱进行特征提取的方法识别正常与擦伤车轮准确率可以达到100%,擦伤等级的准确率可以达到94.6%。最后将该方法与EMD方法进行特征提取做比较分析,EMD方法识别正常与擦伤车轮准确率为98.3%,而擦伤级别准确率仅为56.4%。研究结果表明,基于高阶谱的PSO-SVM方法更能有效识别擦伤车轮并确定其擦伤等级。

关键词: PSO-SVM, 钢轨振动响应, 高阶谱, 灰度-梯度共生矩阵, 车轮擦伤

Abstract:

With the increasing of train speed and axle load, the wheel flats occur more frequently. A detection method for wheel flats is proposed based on PSO-SVM, in which high-order spectrum is used to extract the features of the rail vibration responses when the train runs on the rail. A vehicle-track vertical coupling system and wheel flat are modeled and the rail dynamic responses are calculated with the condition of normal wheel and wheel flat. The two-dimensional contour and three-dimensional double spectrum diagrams are obtained by analyzing two kinds of rail vibration responses with high-order spectrum method. Six texture features of the 2D contour map, which are extracted from gray-gradient co-occurrence matrix, are combined with the train speed to detect whether there is a wheel flat by PSO-SVM. Then the peak value of the diagonal slice of the three-dimensional double spectrum map and the frequency of the inner spread of the two-dimensional contour map are added into PSO-SVM to recognize different wheel-flat levels. The results show that the detection accuracy of normal wheel and wheel flats can be up to 100% and the recognition accuracy of wheel flat different levels is 94.6%. Finally, the recognition accuracy are compared and analyzed between high-order spectrum and EMD methods which are used to extract the feature signals. For EMD method, the detection accuracy for wheel flats is 98.3%, and for different wheel flat levels is only 56.4%. The investigation shows the detection method based on high-order spectrum and PSO-SVM can be used to identify wheel flat and its levels effectively.

Key words: gray-gradient co-occurrence matrix, high-order spectrum, PSO-SVM, rail vibration responses, wheel flats