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A fault diagnosis method for rolling bearings based on pop-preserving transfer learning

A fault diagnosis and rolling bearing technology, applied in the field of rolling bearing fault diagnosis based on popular retention transfer learning, can solve the problems of reduced practicability of intelligent diagnosis methods, insufficient marked target fault data, inability to establish accurate target bearing fault diagnosis models, etc. Running speed and accuracy, maintaining accuracy, reducing the effect of edge distribution differences

Active Publication Date: 2022-03-29
CHINA UNIV OF MINING & TECH
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  • Abstract
  • Description
  • Claims
  • Application Information

AI Technical Summary

Problems solved by technology

(1) In the traditional mechanical equipment fault diagnosis model, the feature extraction and fault classification steps assume that the training data and test data have the same distribution, but when the working conditions in the actual industrial scene are inconsistent, this common premise does not hold, resulting in the intelligent diagnosis method The usefulness of the
(2) Due to the changeable working conditions of rotating machinery and various types of faults, but limited to the situation where the experimental site and equipment faults cannot be completely simulated, only a small part of the actual measurable data for bearing faults makes the marking target fault data insufficient
Therefore, traditional data-driven intelligent diagnosis methods cannot establish accurate target bearing fault diagnosis models in real diagnosis scenarios

Method used

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  • A fault diagnosis method for rolling bearings based on pop-preserving transfer learning
  • A fault diagnosis method for rolling bearings based on pop-preserving transfer learning
  • A fault diagnosis method for rolling bearings based on pop-preserving transfer learning

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Embodiment Construction

[0082] Such asfigure 1 As shown, a rolling bearing fault diagnosis method based on popular preservation transfer learning includes 4 processes, as follows:

[0083] Process 1. Signal Processing

[0084] The bearing vibration signals collected under different working conditions are divided into training sets and test sets required by the present invention, wherein the training set is marked samples (that is, the state of the bearing is known), and the test set uses unmarked samples. MODWPT is used to process the signal of each sample, decompose it into different grouping nodes, and obtain the characteristic data set expressing the operating state of the bearing by calculating the amplitude, kurtosis, etc. Carry out four-layer WODWPT decomposition for each vibration signal sample, obtain 16 terminal nodes and corresponding wavelet packet coefficients, perform single-branch wavelet packet reconstruction on 16 terminal nodes, and obtain 16 single-branch reconstructed signals, and ...

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Abstract

The present invention proposes a rolling bearing fault diagnosis method based on popular-preserving transfer learning, combines local linear space discrimination (LFDA) and transfer component analysis (TCA), and designs a semi-supervised transfer component analysis method (TCAPLMS) that retains local manifold structure ), while reducing the difference in data distribution between different domain datasets, obtain a local manifold structure that can retain sample label information and state feature information, and propose a preferred feature selection method based on fault sensitivity and feature correlation (PSFFC) embedded into this framework to reduce redundant information in the feature parameter space of time-frequency statistics. The method proposed by the invention can significantly improve the diagnostic accuracy, and has strong adaptability and generalization ability to actual industrial scenes.

Description

technical field [0001] The invention relates to the field of fault diagnosis, in particular to a rolling bearing fault diagnosis method based on popularity-keeping transfer learning. Background technique [0002] When rotating machinery operates in harsh working environments, the failure probability of rolling bearings (REBs) is generally higher than other components of rotating machinery. At the same time, bearings play a very important role in industrial applications. In order to ensure the reliability of their work and reduce the economic loss caused by damage, the fault diagnosis of bearings has attracted more and more attention. With the advent of the big data era, signal processing and data mining technologies are developing rapidly, and data-driven fault diagnosis methods are also developing rapidly. However, traditional data-driven intelligent diagnosis methods have the following disadvantages in terms of applicability in practical industrial applications. (1) In t...

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Application Information

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Patent Type & Authority Patents(China)
IPC IPC(8): G06K9/62G06F17/16G06F17/18
CPCG06F17/16G06F17/18G06F18/23G06F18/213G06F18/214
Inventor 俞啸陈伟丁恩杰吴传龙任晓红
Owner CHINA UNIV OF MINING & TECH