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Rolling bearing fault diagnosis via STFT and improved instantaneous frequency estimation method

机译:STFT滚动轴承故障诊断和改进的瞬时频率估计方法

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摘要

Bearing vibration signals exhibit instantaneous modulation features under variable rotating frequency, making it difficult to identify the characteristic frequency components. As such, a novel rolling bearing fault diagnosis method via short time Fourier transform (STFT) and improved instantaneous frequency estimation algorithm is proposed. The novelty is that it can convert all the trajectories of instantaneous components, e.g., fault characteristic frequency (FCF) and modulation rotating frequency, to linear path in the time-frequency domain. First, a band pass filter is applied to separate the optimal frequency band which is determined by fast kurtogram. Second, the envelope time-frequency representation (TFR) is obtained by jointly adopting Hilbert transform and STFT to the filtered signal. Next, the instantaneous fault characteristic frequency (IFCF) is extracted from the filtered TFR based on improved instantaneous frequency estimation algorithm. Then, the frequency representation is calculated by dealing with the TFR of the envelope. Finally, the proportion of FCF to rotational frequency on the frequency representation is computed and then compared with the theoretical characteristic coefficient. The method is evaluated via the experimental data. The result demonstrates that bearing fault pattern can be identified via the proposed method.
机译:轴承振动信号在可变旋转频率下表现出瞬时调制特征,使得难以识别特征频率分量。这样,提出了一种通过短时间傅里叶变换(STFT)和改进的瞬时频率估计算法的新型滚动轴承故障诊断方法。新颖性是它可以将瞬时组件的所有轨迹转换为时频域中的线性路径的瞬时组件的所有轨迹,例如故障特征频率(FCF)和调制旋转频率。首先,应用带通滤波器以分离由快速KurtoGram确定的最佳频带。其次,通过将希尔伯特变换和STFT联合到滤波信号来获得包络时间频率表示(TFR)。接下来,基于改进的瞬时频率估计算法从滤波的TFR中提取瞬时故障特征频率(IFCF)。然后,通过处理信封的TFR来计算频率表示。最后,计算FCF对频率表示上的旋转频率的比例,然后与理论特征系数进行比较。该方法通过实验数据进行评估。结果表明,可以通过所提出的方法识别轴承故障图案。

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