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风力机叶片裂纹特征的小波尺度谱识别
引用本文:曲弋,陈长征,赵新光,周勃.风力机叶片裂纹特征的小波尺度谱识别[J].沈阳工业大学学报,2012,34(1):22-25.
作者姓名:曲弋  陈长征  赵新光  周勃
作者单位:沈阳工业大学机械工程学院;沈阳工业大学建筑工程学院
基金项目:国家自然科学基金资助项目(50975180;51005159)
摘    要:为了在强大噪声干扰下提取风力机叶片的早期裂纹特征,识别不同种类的裂纹,通过搭建声发射设备检测风力机叶片复合材料块实验平台,采集扩展裂纹与萌生裂纹的声发射信号,并借助小波尺度谱优越的时频分析性能来有效提取裂纹信号的特征,以区别扩展裂纹和萌生裂纹.实验结果表明,小波尺度谱能有效提取非线性、非平稳信号中的故障特征,优于小波分析方法.通过实验研究,得到了识别扩展裂纹和萌生裂纹的判据,建立了基于声发射和小波尺度谱的风力机叶片裂纹识别新方法.

关 键 词:风力机  叶片  裂纹  声发射  小波尺度谱  复合材料  早期损伤识别  信号提取  

Wavelet scalogram identification for crack feature of wind turbine blade
QU Yia,CHEN Chang-zhenga,ZHAO Xin-guanga,ZHOU Bo.Wavelet scalogram identification for crack feature of wind turbine blade[J].Journal of Shenyang University of Technology,2012,34(1):22-25.
Authors:QU Yia  CHEN Chang-zhenga  ZHAO Xin-guanga  ZHOU Bo
Affiliation:b(a.School of Mechanical Engineering,b.School of Architecture and Civil Engineering,Shenyang University of Technology,Shenyang 110870,China)
Abstract:In order to extract the early crack feature of wind turbine blades with strong noise interference and identify different kinds of cracks,the experimental platform was constructed to detect the composite material block of wind turbine blades,and the acoustic emission(AE) signals of both propagated and initiated cracks were collected.With the superior time-frequency analysis performance of wavelet scalogram,the signal characteristics of cracks were extracted effectively,and the propagated and initiated cracks were distinguished.The experimental results reveal that the wavelet scalogram identification can extract the fault feature in nonlinear and non-stationary signals effectively,and is better than the wavelet analysis method.The criterion for recognizing the propagated and initiated cracks was obtained with the experiments and research.The new method for the crack identification of wind turbine blades based on AE and wavelet scalogram was established.
Keywords:wind turbine  blade  crack  acoustic emission  wavelet scalogram  composite material  early damage identification  signal extraction
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