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Fault recognition of large steam turbine based on higher order spectral features of vibration signals

机译:基于振动信号高阶谱特征的大型汽轮机故障识别

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Shaft vibration of large steam turbine has a characteristic of sub-Gaussian signal with predominant components of rotating speed and its harmonics. Most of faults occurred on shaft indicate the change of harmonics with nonlinear coupling reciprocity each other, that makes it difficulty to identify the fault source and extract the fault feature from vibration signals by means of power spectral analysis based on second-order statistical analysis. This paper took an unstable vibration phenomenon with half frequency characteristic of a large steam turbine as an example, and made use of higher order statistics analysis (HOSA) to determine the fault with half frequency characteristics. By comparing the bispectrum and 1(1/2) dimensional spectrum of vibration signals under stable condition with unstable condition, the nonlinear harmonic coupling characteristics of the half frequency component was determined. A method for fault feature extraction was proposed by using the corresponding component in bispectral marginal spectrum and in 1(1/2) dimensional spectrum as feature values to monitor the trend of unstable vibration. And fault recognition and classification were made according to the Fisher criterion. The results show that these feature extraction methods of quadratic phase coupling can clearly reveal the great change caused by abnormal vibration of steam turbine, and reveal the non-Gaussian nonlinear characteristics of vibration signals. The characteristic values are quite sensitive to faults, and they can effectively restrain the Gaussian noise in vibration signals. So they are very suitable for automatic fault diagnosis.
机译:大型汽轮机的轴振动具有副高斯信号的特性,具有旋转速度的主要成分及其谐波。轴上发生的大部分故障表明谐波的变化与非线性耦合相互互动,这使得难以通过基于二阶统计分析的功率谱分析来识别故障源并从振动信号中提取故障特征。本文采用了一个不稳定的振动现象,具有大型汽轮机的半频特性,作为一个例子,并利用高阶统计分析(HOSA)来确定具有半频率特性的故障。通过在稳定条件下比较振动信号的BISPectrum和1(1/2)尺寸尺寸频谱,具有不稳定状态,确定了半频分量的非线性谐波耦合特性。通过使用双光谱边缘频谱和1(1/2)尺寸光谱中的相应分量作为特征值来提出故障特征提取方法,以监测不稳定振动的趋势。根据Fisher标准进行了故障识别和分类。结果表明,二次相位耦合的这些特征提取方法可以清楚地揭示汽轮机异常振动引起的巨大变化,并揭示了振动信号的非高斯非线性特性。特征值对故障非常敏感,并且它们可以有效地抑制振动信号中的高斯噪声。因此,它们非常适合自动故障诊断。

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