• CN:11-2187/TH
  • ISSN:0577-6686

›› 2013, Vol. 49 ›› Issue (3): 80-87.

• 论文 • 上一篇    下一篇

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滚动轴承复合故障特征分离的小波-频谱自相关方法

明安波;褚福磊;张炜   

  1. 清华大学摩擦学国家重点实验室;第二炮兵工程大学六系
  • 发布日期:2013-02-05

Compound Fault Features Separation of Rolling Element Bearing Based on the Wavelet Decomposition and Spectrum Auto-correlation

MING Anbo;CHU Fulei;ZHANG Wei   

  1. State Key laboratory of Tribology, Tsinghua University The Sixth Department, The Second Artillery Engineering University
  • Published:2013-02-05

摘要: 为解决从单通道振动信号中实现复合故障特征分离的问题,提出基于小波框架理论的小波-频谱自相关方法。该方法采用正交小波基函数将复合故障信号分解为多个不同尺度的子信号后,对各子信号分别进行频谱自相关分析。研究表明:频谱自相关方法能够去掉时域自相关方法产生的拖尾现象,能量集中性更高、抗噪能力更强,能够突出复合故障信号中能量较大的冲击故障特征。对6220轴承内、外圈复合故障试验信号分析的结果表明:小波-频谱自相关方法将复合故障特征分解到不同通道后,有效地抑制各子信号中能量较弱的故障特征,实现了内、外圈复合故障特征分离。在相同的小波分解条件下,小波-频谱自相关方法比小波-包络谱的特征分离效果更好,具有较高的工程应用价值。

关键词: 复合故障, 滚动轴承, 频谱自相关, 特征分离, 小波分解

Abstract: In order to separate the compound fault features from a single-channel vibration, the combination of the wavelet decomposition and spectrum auto-correlation method is proposed, based on the wavelet frame theory. Decomposing the compound fault deduced vibration with orthogonal wavelet basis functions, the spectrum auto-correlation method is applied to sub-signals that reconstructed with different scales vibration respectively. Eliminating the tail phenomenon which existed in the result of time domain auto-correlation, the proposed method possesses a more powerful anti-noise capability and highlights the fault deduced impulse feature with primary energy. Based on the analysis of vibration collected on the test rig of 6220 rolling element bearing with inner and outer race defect, the efficiency of the proposed procedure is validated as well. It is shown that the lesser powerful fault induced impulsive feature is restrained in any decomposed sub signals, which actualizes the separation of the compound fault features. Compared with the combination of wavelet and envelope analysis, the proposed method is more powerful with efficient features separation effect and is valuable for the engineering application.

Key words: Compound fault, Features separation, Rolling element bearing, Spectrum auto-correlation, Wavelet decomposition

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