Sliding bearing fault diagnosis method based on generative adversarial network and convolutional neural network

A convolutional neural network and sliding bearing technology, applied in the field of sliding bearing fault diagnosis based on generative confrontation network and convolutional neural network, can solve the increased workload and difficulty of fault diagnosis, the inability to achieve accurate diagnosis, and the number of samples required and other problems to achieve the effect of solving the lack of original data sets, speeding up training, and reducing dimensions

Active Publication Date: 2020-07-28
苏州新传品智能科技有限公司
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Problems solved by technology

And when the temperature of the bearing bush exceeds the warning value, there are many reasons for the temperature rise of the bearing bush, and it is impossible to make an accurate diagnosis
At present, the popular deep learning-based fault diagnosis method combines fea

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  • Sliding bearing fault diagnosis method based on generative adversarial network and convolutional neural network
  • Sliding bearing fault diagnosis method based on generative adversarial network and convolutional neural network
  • Sliding bearing fault diagnosis method based on generative adversarial network and convolutional neural network

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[0029] The following will clearly and completely describe the technical solutions in the embodiments of the present invention with reference to the accompanying drawings in the embodiments of the present invention. Obviously, the described embodiments are only some, not all, embodiments of the present invention. Based on the embodiments of the present invention, all other embodiments obtained by persons of ordinary skill in the art without creative efforts fall within the protection scope of the present invention.

[0030] Such as figure 1 As shown, a sliding bearing fault diagnosis method based on generative confrontation network and convolutional neural network, the method includes:

[0031] Step 1: At the sampling frequency f 1 The vibration signals of sliding bearings with no fault and different fault degrees under different fault conditions are collected, and the frequency f 2 Collect the bearing bush temperature corresponding to the vibration signal within this time pe...

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Abstract

The invention provides a sliding bearing fault diagnosis method based on a generative adversarial network and a convolutional neural network. The method comprises the steps of: collecting vibration signals and bearing bush temperatures of a sliding bearing under no fault and different fault conditions, and carrying out preprocessing; carrying out ensemble average empirical mode decomposition on the vibration signals to obtain an optimal intrinsic mode function and a characteristic frequency corresponding to the optimal intrinsic mode function; constructing state matrixes on the basis of the bearing bush temperatures, and respectively inputting the state matrixes into the generative adversarial network according to categories to generate samples; carrying out edge expansion on the data of an initial sample set, and setting fault state labels; constructing a sliding bearing convolutional neural network model, and training the model by using the data set and the corresponding fault labels; and collecting data of the current sliding bearing, constructing a state matrix, inputting the state matrix into the trained neural network model, and carrying out fault diagnosis and prediction. With the method of the invention adopted, the problems of unobvious vibration fault signals, poor diagnosis effect, insufficient bearing bush temperature utilization and insufficient sample size are effectively solved.

Description

technical field [0001] The invention relates to the technical field of fault diagnosis, in particular to a sliding bearing fault diagnosis method based on generating confrontation networks and convolutional neural networks. Background technique [0002] In the industrial manufacturing process, sliding bearings are an important component of mechanical components, and many fault states of rotating machinery are related to sliding bearings. Sliding bearings are also one of the links most prone to damage in the manufacturing process. Common faults include: excessive bearing clearance, oil film whirl, oil film oscillation, bearing wear, bush burning, bodiless, etc. These faults will reduce the rotation accuracy of the bearing, generate noise, vibration, and further cause the bearing to be stuck, and finally make the entire rotating machine fail. Therefore, it is of great significance to carry out fault diagnosis on sliding bearings. [0003] The traditional sliding bearing faul...

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Application Information

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IPC IPC(8): G01M13/04G01M13/045G01D21/02G06N3/04
CPCG01M13/04G01M13/045G01D21/02G06N3/045Y02T90/00
Inventor 齐亮黄晶万振刚袁文华
Owner 苏州新传品智能科技有限公司
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