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首页> 外文期刊>Journal of Sound and Vibration >Envelope extraction based dimension reduction for independent component analysis in fault diagnosis of rolling element bearing
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Envelope extraction based dimension reduction for independent component analysis in fault diagnosis of rolling element bearing

机译:基于包络提取的降维用于独立分量分析的滚动轴承故障诊断

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摘要

A robust feature extraction scheme for the rolling element bearing (REB) fault diagnosis is proposed by combining the envelope extraction and the independent component analysis (ICA). In the present approach, the envelope extraction is not only utilized to obtain the impulsive component corresponding to the faults from the REB, but also to reduce the dimension of vibration sources included in the sensor-picked signals. Consequently, the difficulty for applying the ICA algorithm under the conditions that the sensor number is limited and the source number is unknown can be successfully eliminated. Then, the ICA algorithm is employed to separate the envelopes according to the independence of vibration sources. Finally, the vibration features related to the REB faults can be separated from disturbances and clearly exposed by the envelope spectrum. Simulations and experimental tests are conducted to validate the proposed method.
机译:通过将包络提取与独立分量分析(ICA)相结合,提出了一种用于滚动轴承(REB)故障诊断的鲁棒特征提取方案。在本方法中,包络提取不仅用于从REB获得与故障相对应的脉冲分量,而且还用于减小传感器拾取的信号中包括的振动源的尺寸。因此,可以成功地消除在传感器数量受限且源数量未知的情况下应用ICA算法的困难。然后,根据振动源的独立性,采用ICA算法分离包络。最后,与REB故障有关的振动特征可以与干扰分开,并被包络谱清楚地暴露出来。仿真和实验测试进行了验证该方法。

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