Intelligent fault diagnosis method based on multi-task feature sharing neural network

A fault diagnosis, neural network technology, applied in neural learning methods, biological neural network models, neural architectures, etc., can solve the problem of poor scalability and transferability of algorithms, inconsistent with industrial actual conditions, poor generalization ability of diagnostic algorithms, etc. problems, to achieve the effect of increasing diversity, avoiding artificial feature extraction, and reducing time complexity

Active Publication Date: 2019-10-22
SOUTH CHINA UNIV OF TECH
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AI Technical Summary

Problems solved by technology

However, the general intelligent fault diagnosis method still has the following limitations: 1) The same type of faults with different degradation degrees are regarded as multiple different fault modes, and the classification method is used to identify the degradation degree
However, in the actual industrial environment, the parameters for evaluating the degree of equipment degradation are mostly continuously changing physical quantities, and it is not in line with the actual industrial situation to evaluate equipment degradation by classification; 2) When the working conditions (such as speed and load) change, Poor generalization ability of diagnostic algorithms
Traditional methods generally improve the generalization ability of the model by enlarging the sample size of the data set, but collecting data of each fault type under all working conditions is not only economically costly, but also time-consuming and laborious, and the feasibility of implementation is poor; 3) Existing methods Most of them are limited to specific diagnostic tasks, such as equipment fault classification or performance degradation prediction. The scalability and portability of the algorithm are poor, and it is difficult to meet the increasingly diverse and flexible diagnostic needs in the actual industrial environment.

Method used

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Embodiment

[0038] Such as figure 1 As shown, an intelligent fault diagnosis method based on multi-task feature sharing neural network, the method takes the original vibration signal as input, adopts multi-task joint training, and realizes fault classification and fault degree prediction at the same time, including steps:

[0039] S1. Collect the vibration acceleration signals of rotating machinery under different experimental conditions, and then intercept a certain length of data segment from the original vibration acceleration signal to form a sample; the original vibration acceleration signal collected by the test is a one-dimensional vector with a certain length ; When a certain length of data segment is intercepted from the original vibration acceleration signal to form a sample, the overlapping sampling method is used to enhance the sample of the data set. The sample length is 2048 points, and the overlap rate of the beginning and end of two adjacent samples is 25%. .

[0040] S2,...

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Abstract

The invention discloses an intelligent fault diagnosis method based on a multi-task feature sharing neural network. The intelligent fault diagnosis method comprises the steps of: (1) separately acquiring original vibration acceleration signals of a rotating machine under different experimental conditions, constructing a sample by intercepting a certain length of signal data, and labeling the sample; (2) constructing the multi-task feature sharing neural network, which comprises an input layer, a feature extractor, a classification model and a prediction model; (3) adopting multi-task joint training, and simultaneously training the classification model and the prediction model; (4) and inputting a vibration acceleration signal acquired in an actual industrial environment into the trained models to obtain a multi-task diagnosis result. The intelligent fault diagnosis method can simultaneously realize the classification of fault types and the prediction of the fault degrees, and has highpractical application value.

Description

technical field [0001] The invention belongs to the field of mechanical fault diagnosis, and in particular relates to an intelligent fault diagnosis method based on a multi-task feature sharing neural network. Background technique [0002] With the rapid development of science and technology and the deployment of national strategies such as "Made in China 2025" and "New Generation Artificial Intelligence Development Plan", my country's machinery manufacturing industry is gradually entering the era of digital intelligent manufacturing. Mechanical equipment systems in all walks of life are constantly developing in the direction of complexity, digitization and intelligence. However, mechanical equipment operating under high load, high speed and high operating rate for a long time is prone to fatigue failure, which will lead to equipment shutdown, and even lead to major safety accidents and huge economic losses. Therefore, intelligent fault diagnosis and predictive maintenance ...

Claims

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Application Information

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Patent Type & Authority Applications(China)
IPC IPC(8): G01M13/00G01M13/04G01M13/045G06N3/04
CPCG01M13/00G01M13/04G01M13/045G06N3/045G06N3/08G06N3/048G06N3/044
Inventor 李巍华王震黄如意
Owner SOUTH CHINA UNIV OF TECH
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