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A New Compound Fault Feature Extraction Method Based on Multipoint Kurtosis and Variational Mode Decomposition

机译:基于多点峰度和变分模式分解的复合故障特征提取新方法

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Due to the weak entropy of the vibration signal in the strong noise environment, it is very difficult to extract compound fault features. EMD (Empirical Mode Decomposition), EEMD (Ensemble Empirical Mode Decomposition) and LMD (Local Mean Decomposition) are widely used in compound fault feature extraction. Although they can decompose different characteristic components into each IMF (Intrinsic Mode Function), there is still serious mode mixing because of the noise. VMD (Variational Mode Decomposition) is a rigorous mathematical theory that can alleviate the mode mixing. Each characteristic component of VMD contains a unique center frequency but it is a parametric decomposition method. An improper value of K will lead to over-decomposition or under-decomposition. So, the number of decomposition levels of VMD needs an adaptive determination. The commonly used adaptive methods are particle swarm optimization and ant colony algorithm but they consume a lot of computing time. This paper proposes a compound fault feature extraction method based on Multipoint Kurtosis (MKurt)-VMD. Firstly, MED (Minimum Entropy Deconvolution) denoises the vibration signal in the strong noise environment. Secondly, multipoint kurtosis extracts the periodic multiple faults and a multi-periodic vector is further constructed to determine the number of impulse periods which determine the K value of VMD. Thirdly, the noise-reduced signal is processed by VMD and the fault features are further determined by FFT. Finally, the proposed compound fault feature extraction method can alleviate the mode mixing in comparison with EEMD. The validity of this method is further confirmed by processing the measured signal and extracting the compound fault features such as the gear spalling and the roller fault, their fault periods are 22.4 and 111.2 respectively and the corresponding frequencies are 360 Hz and 72 Hz, respectively.
机译:由于在强噪声环境中振动信号的熵弱,因此很难提取复合故障特征。 EMD(经验模态分解),EEMD(整体经验模态分解)和LMD(局部均值分解)被广泛用于复合故障特征提取中。尽管它们可以将不同的特征分量分解为每个IMF(本征模式功能),但是由于噪声的影响,仍然存在严重的模式混合。 VMD(可变模式分解)是一种严格的数学理论,可以减轻模式混合。 VMD的每个特征分量都包含一个唯一的中心频率,但这是一种参数分解方法。 K值不合适会导致过度分解或分解不足。因此,VMD分解级别的数量需要自适应确定。常用的自适应方法是粒子群优化和蚁群算法,但它们消耗大量的计算时间。提出了一种基于多点峰度(MKurt)-VMD的复合故障特征提取方法。首先,MED(最小熵反卷积)对强噪声环境中的振动信号进行消噪。其次,多点峰态提取周期性的多个断层,并进一步构造一个多周期的向量来确定确定VMD的K值的脉冲周期数。第三,降噪信号由VMD处理,故障特征进一步由FFT确定。最后,与EEMD相比,提出的复合故障特征提取方法可以减轻模式混合。通过处理测量信号并提取复合故障特征(例如齿轮剥落和滚子故障)进一步证实了该方法的有效性,它们的故障周期分别为22.4和111.2,相应的频率分别为360 Hz和72 Hz。

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