Rolling bearing fault diagnosis method based on frequency domain window empirical wavelet resonance demodulation

A rolling bearing and empirical wavelet technology, which is applied in the field of rolling bearing fault diagnosis based on frequency domain window empirical wavelet resonance demodulation, achieves the effects of strong fault characteristics, accurate fault signals, and accurate analysis and processing of fault signals.

Active Publication Date: 2017-11-17
SHIJIAZHUANG TIEDAO UNIV
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However, in the prior art, there is no relevant technical record that can well solve these three key problems at the same time.

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  • Rolling bearing fault diagnosis method based on frequency domain window empirical wavelet resonance demodulation
  • Rolling bearing fault diagnosis method based on frequency domain window empirical wavelet resonance demodulation
  • Rolling bearing fault diagnosis method based on frequency domain window empirical wavelet resonance demodulation

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[0039] The technical solutions in the embodiments of the present invention are clearly and completely described below in conjunction with the accompanying drawings in the embodiments of the present invention. Obviously, the described embodiments are only part of the embodiments of the present invention, not all of them. Based on the embodiments of the present invention, all other embodiments obtained by persons of ordinary skill in the art without making creative efforts belong to the protection scope of the present invention.

[0040] In the following description, a lot of specific details are set forth in order to fully understand the present invention, but the present invention can also be implemented in other ways different from those described here, and those skilled in the art can do it without departing from the meaning of the present invention. By analogy, the present invention is therefore not limited to the specific examples disclosed below.

[0041] Such as figure ...

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Abstract

The invention discloses an adaptive frequency domain window empirical wavelet transformation resonance demodulation method for rolling bearing fault diagnosis. The method comprises steps that step 1, according to acquired parameter indexes, upper and lower cut-off frequency change fluctuation scopes of a frequency domain window are determined; step 2, an empirical wavelet function is constructed, a wavelet coefficient after empirical wavelet transformation is acquired through calculation, and a modal component signal is reconstructed; step 3, an improved envelope harmonic wave signal to noise ratio of the modal component signal is finally determined through normalization processing; step 4, the improved envelope harmonic wave signal to noise ratio of the modal component signal is taken as an optimal fitness function value, a particle swarm optimization method is employed, and the optimal frequency domain window position is determined; and step 5, the fault characteristic information of a rolling bearing fault vibration signal is extracted, resonance demodulation analysis for rolling bearing fault diagnosis is accomplished. The method is advantaged in that a signal frequency band zone can be flexibly selected, and the rolling bearing fault is diagnosed through resonance demodulation through utilizing particle swarm optimization frequency domain window empirical wavelet transformation.

Description

technical field [0001] The invention relates to the technical field of mechanical fault diagnosis and signal processing, in particular to a rolling bearing fault diagnosis method based on frequency domain window empirical wavelet resonance demodulation. Background technique [0002] Rolling bearings are one of the key components in rotating machinery, and their working conditions determine whether the entire mechanical system can operate reliably. However, in practical engineering, the vibration signal of rolling bearing fault is a typical nonlinear and non-stationary signal, and the fault features in the signal are easily covered by various background noises. Therefore, it is very difficult to diagnose rolling bearing faults under strong background noise. [0003] The resonance demodulation method is one of the basic methods of rolling bearing fault diagnosis. During the rolling bearing rotation, the damage point repeatedly collides with the surface of other components in c...

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01M13/04G06F17/14
CPCG01M13/04G06F17/148
Inventor 邓飞跃杨绍普陈恩利潘存治刘永强廖英英任彬顾晓辉
Owner SHIJIAZHUANG TIEDAO UNIV
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