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基于EMD-WVD振动谱时频图像SVM识别的内燃机故障诊断
引用本文:蔡艳平,李艾华,石林锁,许平,张玮.基于EMD-WVD振动谱时频图像SVM识别的内燃机故障诊断[J].内燃机工程,2012,33(2):72-78,85.
作者姓名:蔡艳平  李艾华  石林锁  许平  张玮
作者单位:1. 第二炮兵工程学院五系,西安,710025
2. 西安交通大学机械制造系统工程国家重点实验室,西安,710049
3. 西安交通大学电信学院,西安,710049
基金项目:第二炮兵工程学院创新性基础研究基金项目(XY2009JJB33)
摘    要:为了充分提取基于内燃机振动信号形成的振动谱时频图像的二维时频信息,实现基于内燃机振动谱时频图像特征自动提取及识别,提出了一种基于EMD-WVD(EMD-Wign-er-Ville Distributions)振动谱时频图像SVM识别的内燃机故障诊断方法。该方法利用二进制小波对振动信号进行预处理,然后利用EMD-Wigner-Ville时频分布生成不同工况下振动信号的时频图像,并通过提取振动信号的EMD-WVD振动谱时频图像的不变矩特征形成诊断特征向量,利用一种基于类识别率排序的二叉树SVM分类器进行模式识别。在BF4L1011F型内燃机上进行了6种不同工况下气门故障模拟试验,诊断结果表明总体诊断正确率为98.57%。

关 键 词:内燃机  故障诊断  EMD  图像识别  不变矩  SVM

IC Engine Fault Diagnosis Method Based on EMD-WVD Vibration Spectrum Time-Frequency Image Recognition by SVM
CAI Yan-ping , LI Ai-hua , SHI Lin-suo , XU Ping , ZHANG Wei.IC Engine Fault Diagnosis Method Based on EMD-WVD Vibration Spectrum Time-Frequency Image Recognition by SVM[J].Chinese Internal Combustion Engine Engineering,2012,33(2):72-78,85.
Authors:CAI Yan-ping  LI Ai-hua  SHI Lin-suo  XU Ping  ZHANG Wei
Affiliation:1.Department No.5,the Second Artillery Engineering College,Xi’an 710025,China; 2.State Key Laboratory for Manufacturing Systems Engineering, Xi’an Jiaotong University,Xi’an 710049,China; 3.Telegraphy Institute,Xi’an Jiaotong University,Xi’an 710049,China)
Abstract:In order to realize automatic extraction and recognition of internal combustion engine vibration spectrum time-frequency image feature,a new fault diagnosis method based on EMD-WVD(EMD-Wigner-Ville Distribution) vibration spectrum time-frequency image recognition by SVM was proposed.In the method,the engine vibration signals were decomposed using the binary wavelet and the vibration signal time-frequency images under various operation conditions were generated from the EMD-Wigner-Ville time-frequency distributions.Through extracting moment invariant feature of the images,the diagnosis eigenvectors were achieved and their modes were recognized by an improved binary tree SUM classifier.Experiment results in model BF4L1011F engine indicate that all valve faults under six conditions can be exactly recognized,the accuracy reaches 98.57%.
Keywords:IC engine  fault diagnosis  EMD  image recognition  moment invariant  SVM
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