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基于1-DCNN-LSTM的滚动轴承自适应故障诊断方法研究
引用本文:顾鑫,唐向红,陆见光,黎书文. 基于1-DCNN-LSTM的滚动轴承自适应故障诊断方法研究[J]. 机床与液压, 2020, 48(6): 107-113. DOI: 10.3969/j.issn.1001-3881.2020.06.017
作者姓名:顾鑫  唐向红  陆见光  黎书文
作者单位:贵州大学现代制造技术教育部重点实验室,贵阳550025;贵州大学现代制造技术教育部重点实验室,贵阳550025;贵州大学机械工程学院,贵阳550025;贵州大学公共大数据国家重点实验室,贵阳550025;贵州理工学院机械工程学院,贵阳550003
基金项目:贵州省公共大数据重点实验室开放基金资助项目(2017BDKFJJ019);贵州大学引进人才基金资助项目(贵大人基合字(2016)13号;贵州省留学回国人员科技活动择优资助项目 优秀类项目(2018.0002);贵州省教育厅青年科技人才成长项目(黔教合 KY 字[2017]218);贵州省科技计划项目(黔科合平台人才[2017]5789-10)
摘    要:针对滚动轴承故障振动信号的非线性和非平稳特征,提出了一种自适应的一维卷积神经网络(1-Dimensional Convolutional Neutral Networks,1-DCNN)和长短期记忆网络(Long Short-Term Memory,LSTM)融合的轴承故障诊断方法。首先,将原始一维振动信号通过有重叠取样的方式分别输入1-DCNN和LSTM两个通道,然后通过Concatenate层进行空间和时间维度上特征信息的融合,最后,通过Softmax分类器进行故障类别的分类输出。该方法可以直接从原始振动信号中自适应提取特征,实现了"端到端"的故障诊断。采用CTU-2实验平台故障数据,通过对滚动轴承的不同故障类型、不同传感器采集方位、不同故障直径进行实验分析,结果表明:该方法在识别轴承故障类别上与其他方法相比具有更高的识别精度,并具有良好的有效性和稳定性。

关 键 词:故障诊断  自适应  卷积神经网络  长短期记忆网络  滚动轴承

Adaptive fault diagnosis method for rolling bearings based on 1-DCNN-LSTM
Xin GU,Xiang-hong TANG,Jian-guang LU,Shu-wen LI. Adaptive fault diagnosis method for rolling bearings based on 1-DCNN-LSTM[J]. Machine Tool & Hydraulics, 2020, 48(6): 107-113. DOI: 10.3969/j.issn.1001-3881.2020.06.017
Authors:Xin GU  Xiang-hong TANG  Jian-guang LU  Shu-wen LI
Affiliation:(Key Laboratory of Advanced Manufacturing Technology,Ministry of Education,Guizhou University,Guiyang 550025,China;School of Mechanical Engineering,Guizhou University,Guiyang 550025,China;State Key Laboratory of PublicBig Data,Guizhou University,Guiyang 550025,China;School of Mechanical Engineering,Guizhou Institute of Technology,Guiyang 550003,China)
Abstract:Aiming at the non-linear and non-stationary characteristics of rolling bearing fault vibration signals,this paper proposes an adaptively bearing fault diagnosis method based on one-dimensional convolutional neural network(1-DCNN)and long-short-term memory(LSTM)network.Firstly,the original one-dimensional vibration signals are input into the two channels of 1-DCNN and LSTM by overlapping sampling.Then they fuse the feature information of spatial and temporal dimensions through the concatenate layer.Finally,the classifications of the fault categories are performed by the softmax classifier.The method can extract features from the original vibration signal adaptively and achieve"end-to-end"fault diagnosis.The experimental analysis of rolling bearings of different fault types,different sensor acquisition orientations and different fault diameters shows that the proposed method has higher recognition accuracy compared with other methods in identifying bearing fault categories,and has good adaptability and effectiveness.
Keywords:Fault diagnosis  Adaptively  Convolutional neutral networks  Long-short-term memory network  Rolling bearings
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