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作者:

Huang, Tengda (Huang, Tengda.) | Fu, Sheng (Fu, Sheng.) | Feng, Haonan (Feng, Haonan.) | Kuang, Jiafeng (Kuang, Jiafeng.)

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EI Scopus SCIE

摘要:

Recently, deep learning technology was successfully applied to mechanical fault diagnosis. The convolutional neural network (CNN), as a prevalent deep learning model, occupies a place in intelligent fault diagnosis, which reduces the need for human feature extraction and prior knowledge, thereby achieving an end-to-end intelligent fault diagnosis model. However, the data for mechanical fault diagnosis in practical application are limited, the CNN model is too deep and too complex, making it prone to overfitting, and a model with too simple a structure and shallow layers cannot fully learn the effective features of the data. Convolutional filters with fixed window sizes are widely used in existing CNN models, which cannot flexibly select variable pivotal features. The model may be interfered with by redundant information in feature maps during training. Therefore, in this paper, a novel shallow multi-scale convolutional neural network with attention is proposed for bearing fault diagnosis. The shallow multi-scale convolutional neural network structure can fully learn the feature information of input data without overfitting. For the first time, a feature attention mechanism is developed for fault diagnosis to adaptively select features for classification more effectively, where the pivotal feature was emphasized, and the redundant feature was weakened through an attention mechanism. The time frequency representations as the input of the model were obtained from the vibration time domain signals, which contain the complete time domain and frequency domain information of the vibration signals. Compared with the current popular diagnostic methods, the results show that the proposed diagnostic method has fairly high accuracy, and its performance is superior to the existing methods. The average recognition accuracy was 99.86%, and the weak recognition rate of I-07 and I-14 labels was improved.

关键词:

time frequency representation multi-scale convolutional neural network multi-attention mechanism Bearing fault diagnosis

作者机构:

  • [ 1 ] [Huang, Tengda]Beijing Univ Technol, Inst Intelligent Monitoring & Diag, Beijing 100124, Peoples R China
  • [ 2 ] [Fu, Sheng]Beijing Univ Technol, Inst Intelligent Monitoring & Diag, Beijing 100124, Peoples R China
  • [ 3 ] [Feng, Haonan]Beijing Univ Technol, Inst Intelligent Monitoring & Diag, Beijing 100124, Peoples R China
  • [ 4 ] [Kuang, Jiafeng]Beijing Univ Technol, Inst Intelligent Monitoring & Diag, Beijing 100124, Peoples R China

通讯作者信息:

  • [Fu, Sheng]Beijing Univ Technol, Inst Intelligent Monitoring & Diag, Beijing 100124, Peoples R China

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来源 :

ENERGIES

年份: 2019

期: 20

卷: 12

3 . 2 0 0

JCR@2022

ESI学科: ENGINEERING;

ESI高被引阀值:136

被引次数:

WoS核心集被引频次: 33

SCOPUS被引频次: 38

ESI高被引论文在榜: 0 展开所有

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