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Wavelet correlation feature scale entropy and fuzzy support vector machine approach for aeroengine whole-body vibration fault diagnosis

机译:小波相关特征尺度熵和模糊支持向量机的航空发动机全身振动故障诊断

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In order to correctly analyze aeroengine whole-body vibration signals, Wavelet Correlation Feature Scale Entropy (WCFSE) and Fuzzy Support Vector Machine (FSVM) (WCFSE-FSVM) method was proposed by fusing the advantages of the WCFSE method and the FSVM method. The wavelet coefficients were known to be located in high Signal-to-Noise Ratio (S/N or SNR) scales and were obtained by the Wavelet Transform Correlation Filter Method (WTCFM). This method was applied to address the whole-body vibration signals. The WCFSE method was derived from the integration of the information entropy theory and WTCFM, and was applied to extract the WCFSE values of the vibration signals. Among the WCFSE values, the Wcfsei and W_(cfse2) values on the scale 1 and 2 from the high band of vibration signal were believed to acceptably reflect the vibration feature and were selected to construct the eigenvectors of vibration signals as fault samples to establish the WCFSE-FSVM model. This model was applied to aeroengine whole-body vibration fault diagnosis. Through the diagnoses of four vibration fault modes and the comparison of the analysis results by four methods (SVM, FSVM, WESE-SVM, WCFSE-FSVM), it is shown that the WCFSE-FSVM method is characterized by higher learning ability, higher generalization ability and higher anti-noise ability than other methods in aeroengine whole-vibration fault analysis. Meanwhile, this present study provides a useful insight for the vibration fault diagnosis of complex machinery besides an aeroengine.
机译:为了正确分析航空发动机的全身振动信号,结合WCFSE方法和FSVM方法的优点,提出了小波相关特征尺度熵(WCFSE)和模糊支持向量机(FSVM)(WCFSE-FSVM)方法。已知小波系数位于高信噪比(S / N或SNR)范围内,并且是通过小波变换相关滤波器方法(WTCFM)获得的。该方法被用于处理全身振动信号。 WCFSE方法是从信息熵理论和WTCFM的集成中推导出来的,并被用于提取振动信号的WCFSE值。在WCFSE值中,来自振动信号高频带的标度1和2的Wcfsei和W_(cfse2)值被认为可以令人满意地反映振动特征,并被选择构造振动信号的特征向量作为故障样本以建立振动信号。 WCFSE-FSVM模型。该模型用于航空发动机全身振动故障诊断。通过对四种振动故障模式的诊断以及四种方法(SVM,FSVM,WESE-SVM,WCFSE-FSVM)的分析结果的比较表明,WCFSE-FSVM方法具有学习能力强,推广性高的特点。在航空发动机全振动故障分析中具有比其他方法更高的抗干扰能力和更高的抗噪能力。同时,本研究为航空发动机以外的复杂机械振动故障诊断提供了有用的见识。

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