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A New Motor Fault Detection Method Using Multiple Window S-method Time-Frequency Analysis

机译:一种新的电机故障检测方法,使用多窗口方法时频分析

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Fault signals of motors is non-stationary typically. Conventional Fourier transform method can't meet the demand of fault signals extraction. Time-frequency analysis (TFA) based motor fault diagnosis methods, which can identify rotor faults by detecting time-varying frequency components of stator current signals, have been very important signal processing techniques. This paper proposes a new motor fault detection method based on multiple window S-method TFA. Slepian sequences are applied as window functions. Compared with common short-time Fourier transform (STFT) and Wigner-Ville distribution (WVD), multiple window S-method TFA provides better time-frequency concentration and cross-term suppression performances, thus improving accuracy rate of motor rotor fault detection. Taking rotor dynamic eccentricity fault as an example, the validity of method is demonstrated.
机译:通常通常的电机的故障信号通常是非静止的。传统的傅里叶变换方法不能满足故障信号提取的需求。基于时频分析(TFA)电机故障诊断方法,可以通过检测定子电流信号的时变频率分量来识别转子故障,这是非常重要的信号处理技术。本文提出了一种基于多窗口S-Method TFA的新电机故障检测方法。绞车序列用作窗口功能。与常见的短时傅里叶变换(STFT)和Wigner-Ville分布(WVD)相比,多个窗口S方法TFA提供更好的时频浓度和截串抑制性能,从而提高电动机转子故障检测的精度率。以转子动态偏心故障为例,证明了方法的有效性。

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