首页> 外文期刊>Proceedings of the Institution of Mechanical Engineers, Part C. Journal of mechanical engineering science >Fault diagnosis of rolling bearing based on empirical mode decomposition and higher order statistics
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Fault diagnosis of rolling bearing based on empirical mode decomposition and higher order statistics

机译:基于经验模态分解和高阶统计量的滚动轴承故障诊断

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摘要

In order to solve the problem of the faulted rolling bearing signal getting easily affected by Gaussian noise, a new fault diagnosis method was proposed based on empirical mode decomposition and high-order statistics. Firstly, the vibration signal was decomposed by empirical mode decomposition and the correlation coefficient of each intrinsic mode function was calculated. These intrinsic mode function components, which have a big correlation coefficient, were selected to estimate its higher order spectrum. Then based on the higher order statistics theory, this method uses higher order spectrum of each intrinsic mode function to reconstruct its power spectrum. And these power spectrums were summed to obtain the primary power spectrum of bearing signal. Finally, fault feature information was extracted from the reconstructed power spectrum. A model, using higher order spectrum to reconstruct power spectrum, was established. Meanwhile, analysis was conducted by using the simulated data and the recorded vibration signals which include inner race, out race, and bearing ball fault signal. Results show that the presented method is superior to traditional power spectrum method in suppressing Gaussian noise and its resolution is higher. New method can extract more useful information compared to the traditional method.
机译:为解决滚动轴承故障信号容易受到高斯噪声影响的问题,提出了一种基于经验模态分解和高阶统计的故障诊断新方法。首先,通过经验模态分解对振动信号进行分解,计算出每个固有模态函数的相关系数。选择这些具有较大相关系数的固有模式函数分量来估计其高阶谱。然后,基于高阶统计理论,该方法使用每个本征模函数的高阶谱来重构其功率谱。并对这些功率谱进行求和以获得方位信号的主要功率谱。最后,从重构的功率谱中提取故障特征信息。建立了使用高阶频谱重构功率谱的模型。同时,利用模拟数据和记录的振动信号进行分析,包括内座圈,外座圈和轴承滚珠故障信号。结果表明,该方法在抑制高斯噪声方面优于传统的功率谱方法,且分辨率较高。与传统方法相比,新方法可以提取更多有用的信息。

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