基本信息来源于合作网站,原文需代理用户跳转至来源网站获取       
摘要:
Roller bearing failure is one of the most common faults in rotating machines.Various techniques for bearing fault diagnosis based on faults feature extraction have been proposed.But feature extraction from fault signals requires expert prior information and human labour.Recently,deep learning algorithms have been applied extensively in the condition monitoring of rotating machines to learn features automatically from the input data.Given its robust per-formance in image recognition,the convolutional neural network(CNN)architecture has been widely used to learn automatically discriminative features from vibration images and classify health conditions.This paper proposes and evaluates a two-stage method RGBVI-CNN for roller bearings fault diagnosis.The first stage in the proposed method is to generate the RGB vibration images(RGBVIs)from the input vibration signals.To begin this process,first,the 1-D vibration signals were converted to 2-D grayscale vibration Images.Once the conversion was completed,the regions of interest(ROI)were found in the converted 2-D grayscale vibration images.Finally,to produce vibration images with more discriminative characteristics,an algorithm was applied to the 2-D grayscale vibration images to produce connected components-based RGB vibration images(RGBVIs)with sets of colours and texture features.In the second stage,with these RGBVIs a CNN-based architecture was employed to learn automatically features from the RGBVIs and to classify bearing health conditions.Two cases of fault classification of rolling element bearings are used to validate the proposed method.Experimental results of this investigation demonstrate that RGBVI-CNN can generate advan-tageous health condition features from bearing vibration signals and classify the health conditions under different working loads with high accuracy.Moreover,several classification models trained using RGBVI-CNN offered high performance in the testing results of the overall classification accuracy,precision,recall,and F-score.
推荐文章
Using trace elements of magnetite to constrain the origin of the Pingchuan hydrothermal low-Ti magne
SW China
Pingchuan iron deposit
Low-Ti iron deposit
Hydrothermal magnetite
基于recurrent neural networks的网约车供需预测方法
长短时记忆循环神经网络
网约车数据
交通优化调度
TensorFlow
深度学习
利用two-stage GAM研究海州湾及其邻近海域小黄鱼鱼卵的时空分布特征
小黄鱼
两阶段广义可加模型
早期补充
时空分布
环境因子
基于二次反馈的两级交换结构
分组交换
负载均衡
计算复杂度
反馈机制
内容分析
关键词云
关键词热度
相关文献总数  
(/次)
(/年)
文献信息
篇名 Connected Components-based Colour Image Representations of Vibrations for a Two-stage Fault Diagnosis of Roller Bearings Using Convolutional Neural Networks
来源期刊 中国机械工程学报 学科
关键词
年,卷(期) 2021,(3) 所属期刊栏目 Special Issue on AI-Enabled Monitoring Diagnosis & Prognosis
研究方向 页码范围 73-93
页数 21页 分类号
字数 语种 英文
DOI
五维指标
传播情况
(/次)
(/年)
引文网络
引文网络
二级参考文献  (0)
共引文献  (0)
参考文献  (61)
节点文献
引证文献  (0)
同被引文献  (0)
二级引证文献  (0)
1997(1)
  • 参考文献(1)
  • 二级参考文献(0)
1998(1)
  • 参考文献(1)
  • 二级参考文献(0)
1999(1)
  • 参考文献(1)
  • 二级参考文献(0)
2000(1)
  • 参考文献(1)
  • 二级参考文献(0)
2002(1)
  • 参考文献(1)
  • 二级参考文献(0)
2005(2)
  • 参考文献(2)
  • 二级参考文献(0)
2006(1)
  • 参考文献(1)
  • 二级参考文献(0)
2007(3)
  • 参考文献(3)
  • 二级参考文献(0)
2009(1)
  • 参考文献(1)
  • 二级参考文献(0)
2011(3)
  • 参考文献(3)
  • 二级参考文献(0)
2013(3)
  • 参考文献(3)
  • 二级参考文献(0)
2014(2)
  • 参考文献(2)
  • 二级参考文献(0)
2015(3)
  • 参考文献(3)
  • 二级参考文献(0)
2016(8)
  • 参考文献(8)
  • 二级参考文献(0)
2017(12)
  • 参考文献(12)
  • 二级参考文献(0)
2018(5)
  • 参考文献(5)
  • 二级参考文献(0)
2019(9)
  • 参考文献(9)
  • 二级参考文献(0)
2020(4)
  • 参考文献(4)
  • 二级参考文献(0)
2021(0)
  • 参考文献(0)
  • 二级参考文献(0)
  • 引证文献(0)
  • 二级引证文献(0)
引文网络交叉学科
相关学者/机构
期刊影响力
中国机械工程学报
双月刊
1000-9345
11-2737/TH
北京百万庄大街22号期刊部
eng
出版文献量(篇)
2760
总下载数(次)
0
总被引数(次)
17793
论文1v1指导