[1]王 云,徐彦伟,何可承,等.基于信息融合和 SA-CNN 的轴承故障诊断[J].机械与电子,2024,42(07):3-9.
 WANG Yun,XU Yanwei,HE Kecheng,et al.Bearing Fault Diagnosis Method Based on Information Fusion and Self-attention Convolutional Neural Network[J].Machinery & Electronics,2024,42(07):3-9.
点击复制

基于信息融合和 SA-CNN 的轴承故障诊断()
分享到:

《机械与电子》[ISSN:1001-2257/CN:52-1052/TH]

卷:
42
期数:
2024年07期
页码:
3-9
栏目:
研究与设计
出版日期:
2024-07-26

文章信息/Info

Title:
Bearing Fault Diagnosis Method Based on Information Fusion and Self-attention Convolutional Neural Network
文章编号:
1001-2257 ( 2024 ) 07-0003-07
作者:
王 云 1 徐彦伟 1 2 何可承 1 颉潭成 1 2 王军华 1 2 蔡海潮 1
1. 河南科技大学机电工程学院,河南 洛阳 471003 ;?
2. 智能数控装备河南省工程实验室,河南 洛阳 471003
Author(s):
WANG Yun1 XU Yanwei1 2 HE Kecheng1 XIE Tancheng1 2 WANG Junhua1 2 CAI Haichao1
( 1.School of Mechatronics Engineering , Henan University of Science and Technology , Luoyang 471003 , China ;
2.Intelligent CNC Equipment Henan Provincial Engineering Laboratory , Luoyang 471003 , China )
关键词:
轴承故障诊断多头注意力机制信息融合自注意力机制CNN
Keywords:
bearing fault diagnosis multi-head attention mechanism information fusion self-attention mechanism CNN
分类号:
TH133.33
文献标志码:
A
摘要:
针对轴承故障特征提取困难、输入信号单一及故障识别率低等问题,提出基于多头注意力机制信息融合和自注意力机制卷积神经网络的轴承故障诊断方法。首先,预制地铁牵引电机轴承故障,搭建变工况轴承实验台并设计实验方案,采集轴承振动信号和声发射信号;其次,利用多头注意力机制将轴承的振动信号和声发射信号进行融合;最后,将融合后的信号输入自注意力机制卷积神经网络中进行故障诊断。实验结果表明,基于多头注意力机制信息融合和 SA-CNN 的轴承故障智能诊断方法,可以有效关注到轴承故障特征信号,提升变工况下轴承故障诊断的准确率。
Abstract:
Aiming at the problems of difficulty in bearing fault feature extraction , single input signal and low fault recognition rate , a bearing fault diagnosis method based on multi-head attention information fusion and self attention convolutional neural network ( SA-CNN ) was proposed.Firstly , the bearing failure of metro traction motor was pre-made.The bearing test stand with variable working conditions was built and the experimental scheme was designed to collect the bearing vibration signal and sound emission signal.Next , the multi-head attention mechanism is employed to fuse the vibration fault signals and acoustic emission signals of the bearings.Finally , the fused signals are put into a self-attentive mechanism convolutional neural network for fault diagnosis.The final results show that based on multi-head attention information fusion and SA-CNN can effectively pay attention to bearing fault characteristic signals , and improve the accuracy of bearing fault diagnosis under varying working conditions.

参考文献/References:

[ 1 ] 王健 . 地铁车辆走行部故障诊断系统的设计与展望[ J ] . 黑龙江科技信息, 2016 ( 30 ): 37.

[ 2 ] 赵小强,罗维兰 . 改进卷积 Lenet 5 神经网络的轴承故障诊断方法[ J ] . 电子测量与仪器学报, 2022 , 36 ( 6 ):113-125.
[ 3 ] DONG Y F , WEN C B , WANG Z.A motor bearing fault diagnosis method based on multi-source data and one-dimensional lightweight convolution neural network [ J ] .Proceedings of the institution of mechanical engineers , part I : journal of systems and control engineering.2022 , 237 ( 2 ): 272-283.
[ 4 ] LEI J H , LIU C , JIANG D X.Fault diagnosis of wind turbine based on long short-term memory networks [ J ] .Renewable energy , 2019 , 133 : 422-432.
[ 5 ] 苏宪章 . 滚动轴承故障非接触多传感器声信号融合及诊断技术研究[ D ] . 大庆:东北石油大学,2012.
[ 6 ] 孙文卿 . 基于多源信息融合的风电滚动轴承故障诊断研究[ D ] . 南京:东南大学,2020.
[ 7 ] 王双,韩冰冰,李峰 . 面向多源传感器信号融合的滚动轴承多层自助最大熵法故障诊断[ J ] . 中国工程机械学报,2023 , 21 ( 1 ): 90-94.
[ 8 ] 张燕飞,李赟豪,王东峰,等 . 基于多源信息融合的滚动轴承故障监测方法[ J ] . 轴承, 2022 ( 12 ): 59-65.
[ 9 ] 刘春光 . 基于多传感器信息融合的滚动轴承故障诊断研究[ D ] . 青岛:青岛理工大学,2012.
[ 10 ] 鲁炯,朱才朝,王屹立 . 基于信息融合的风电机组齿轮箱轴承故障诊断[ J ] . 重庆大学学报,2020 , 43 ( 8 ):-11-22.
[ 11 ] BAHDANAU D , CHO K , BENGIO Y.Neural machine translation by jointly learning to align and translate [ EB / OL ] . [ 2023-08-03 ] .https : ∥doi.org / 10.48550 / arXiv.1409.0473.
[ 12 ] 葛超,杨奇睿,刘佳伟,等 . 基于空洞卷积神经网络与注意力机制 GRU 的滚动轴承故障诊断[ J ] . 中国冶金,2022 , 32 ( 4 ): 99-105 , 131.
[ 13 ] 李炳达 . 复杂工况下基于注意力机制的滚动轴承智能故障诊断方法研究[ D ] . 北京:北京交通大学,2022.
[ 14 ] 李秋婷,王秀青,解飞,等 . 基于注意力机制的滚动轴承故障诊断方法研究[ J ] . 轴承, 2023( 10 ): 84-92.
[ 15 ] 鲁夕瑶,张成彬,皋军,等 . 基于卷积神经网络与 CatBoost 的轴承故障诊断算法[ J ] . 机电工程, 2023 , 40( 5 ): 715-722.
[ 16 ] 刘权,裴未迟 . 基于自注意力机制条件残差生成对抗网络的滚动轴承故障诊断[ J ] . 轴承, 2022 ( 11 ): 68-75.
[ 17 ] 樊星男,刘晓娟 . 二维卷积神经网络在轴承故障诊断中的应用[ J ] . 机械设计与研究,2022 , 38 ( 3 ): 109-113 , 117.

相似文献/References:

[1]袁 涛,张尚斌,何清波.时变奇异值分解在轴承故障特征提取中的应用研究[J].机械与电子,2017,(06):8.
 YUAN Tao,ZHANG Shangbin,HE Qingbo.Application of Time-varying Singular Value Decomposition in Feature Extraction of Bearing Fault[J].Machinery & Electronics,2017,(07):8.
[2]李 喆,李向学,马贵荣,等.基于深度学习的牵引网短路电流辨识方法研究[J].机械与电子,2025,(11):54.
 LI Zhe,LI Xiangxue,MA Guirong,et al.Research on Deep Learning-based Short-circuit Current Identification Method for Traction Network[J].Machinery & Electronics,2025,(07):54.

备注/Memo

备注/Memo:
收稿日期: 2023-11-03
基金项目:国家自然科学基金资助项目( 51805151 );河南省高等学校重点科研项目( 21B460004 )
作者简介:王 云 ( 1997- ),女,河南安阳人,硕士研究生,研究方向为轴承故障诊断;徐彦伟 ( 1978- ),男,河南洛阳人,博士,教授,研究方向为轴承故障诊断,通信作者。
更新日期/Last Update: 2024-08-28