Rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM

A rolling bearing and fault diagnosis technology, which is applied in the testing of mechanical components, testing of machine/structural components, instruments, etc., can solve the problems of distorted effective information, long decomposition time, large amount of calculation, etc., and achieve suppression of noise interference and suppression Effects of background noise and high computing efficiency

Active Publication Date: 2021-12-10
SHENYANG AEROSPACE UNIVERSITY +1
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Problems solved by technology

However, due to the introduction of Gaussian white noise, the final reconstructed signal is affected by residual white noise, and the original signal cannot be reconstructed accurately. Not only that, but in the iterative operation of the algorithm, the calculation amount is large and the decomposition time is long
At present, wavelet transform and blind source separation have been proved to have a good effect on separating noise and fault signals, but there are problems such as local distortion and partial effective information loss.

Method used

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  • Rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM
  • Rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM
  • Rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM

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Embodiment Construction

[0048] The specific implementation manners of the present invention will be further described in detail below in conjunction with the accompanying drawings and embodiments. The following examples are used to illustrate the present invention, but are not intended to limit the scope of the present invention.

[0049] This embodiment uses real experimental data for analysis, which is obtained from the Bearing Data Center of Western Reserve University. The faulty bearing selected for analysis is the 6205-2RJEM SKF deep groove ball bearing, and the faults of the inner and outer rings of the bearing are processed by single-site damage using EDM technology. The sampling frequency of vibration data is 12000HZ.

[0050] Such as figure 1 As shown, the rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM in this embodiment is as follows.

[0051] Step 1: Use the vibration sensor to collect the vibration signal of the rolling bearing, and measure the relevant parameters of...

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Abstract

The invention discloses a rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM, and the method comprises the steps: carrying out the decomposition of a fault signal collected by a sensor through employing CEEMDAN, screening the decomposed IMF components through employing a correlation coefficient-energy ratio-kurtosis criterion, and reconstructing the screened signal into a new signal; performing parameter optimization selection by using a non-local mean filter optimized by a grey wolf algorithm to realize an optimal denoising effect, performing SG smooth filtering on the denoised signal to perform secondary denoising, and performing feature extraction on the finally obtained signal to obtain fault features of the bearing; and finally judging the fault type of the rolling bearing according to the fault characteristics of the bearing. According to the method, noise interference in the vibration signal can be effectively suppressed, and the fault diagnosis accuracy of the bearing is improved.

Description

technical field [0001] The invention relates to the technical field of bearing fault diagnosis, in particular to a rolling bearing fault diagnosis method based on CEEMDAN and GWO-NLM. Background technique [0002] Rolling bearings are widely used in various rotating mechanical systems, and their motion state will have a huge impact on the accuracy, reliability and service life of the overall mechanical system. Since the bearing works at high speed and under high load, it is more prone to failure, and its working state may affect the performance and safety of the entire machine operation. Therefore, fault diagnosis of rolling bearings is essential for health monitoring of rotating machinery systems. This will help reduce costs related to emergency maintenance and production. During the working process of the bearing, due to improper installation, overload and poor lubrication, it is easy to cause damage to the local defects of the bearing. When the bearing fails in the earl...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01M13/045G06F17/15
CPCG01M13/045G06F17/15Y02T90/00
Inventor 栾孝驰徐石沙云东柳贡民赵奉同赵宇张席
Owner SHENYANG AEROSPACE UNIVERSITY
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