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Generalized Vold–Kalman Filtering for Nonstationary Compound Faults Feature Extraction of Bearing and Gear

机译:轴承和齿轮非平稳复合故障特征提取的广义Vold-Kalman滤波

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摘要

Effective detection of multifaults in bearings and gears is a challenging issue in rotary machinery health monitoring. As such, a generalized Vold-Kalman filtering (GVKF)-based compound faults diagnosis method is presented in this paper. The technique includes four main steps: 1) a time-frequency ridge is separated from the time-frequency representation (TFR) of the vibration signal using a peak search method; 2) according to the time-frequency ridge, GVKF parameters corresponding to all the fault characteristic frequencies (FCFs) are estimated; 3) the fault feature components are obtained using the generalized demodulation transform (GDT) and the VKF with the GVKF parameters; and 4) the spectra obtained by the fast Fourier transform (FFT) are used to fault detection. The main contributions of the proposed method are as follows: 1) the influence of speed fluctuations and the unrelated harmonic components are removed through the integration of the GDT and the VKF and 2) the tachometerless GVKF parameters are defined and calculated to quantitatively detect different fault types, which avoids missed diagnosis and misdiagnosis. The proposed multifault diagnosis algorithm is verified by both simulation and experiment data. Comparison with other commonly used techniques has shown the advantage of the new method.
机译:有效地检测轴承和齿轮中的多故障是旋转机械健康监测中的一个挑战性问题。因此,本文提出了一种基于广义Vold-Kalman滤波(GVKF)的复合故障诊断方法。该技术包括四个主要步骤:1)使用峰值搜索方法将时频脊与振动信号的时频表示(TFR)分开; 2)根据时频脊,估算出与所有故障特征频率(FCF)相对应的GVKF参数; 3)使用广义解调变换(GDT)和带有GVKF参数的VKF获得故障特征分量; 4)通过快速傅里叶变换(FFT)获得的光谱用于故障检测。该方法的主要贡献如下:1)通过GDT和VKF的集成消除了速度波动的影响和不相关的谐波分量; 2)定义并计算了无转速表的GVKF参数,以定量检测不同故障类型,从而避免漏诊和误诊。仿真和实验数据均验证了本文提出的多故障诊断算法。与其他常用技术的比较表明了该新方法的优势。

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