ACDIN: Bridging the gap between artificial and real bearing damages for bearing fault diagnosis

被引:79
作者
Chen, Yuanhang [1 ]
Peng, Gaoliang [1 ]
Xie, Chaohao [2 ]
Zhang, Wei [3 ]
Li, Chuanhao [1 ]
Liu, Shaohui [2 ]
机构
[1] Harbin Inst Technol, State Key Lab Robot & Syst, 92 Xidazhi St, Harbin 150001, Heilongjiang, Peoples R China
[2] Harbin Inst Technol, Sch Comp Sci & Technol, 92 Xidazhi St, Harbin 150001, Heilongjiang, Peoples R China
[3] Natl Univ Singapore, Dept Mech Engn, 10 Kent Ridge Crescent, Singapore 119260, Singapore
基金
中国国家自然科学基金;
关键词
Intelligent fault diagnosis; Convolutional neural network; Artificial damages; Real damages; End-to-end; DEEP NEURAL-NETWORKS;
D O I
10.1016/j.neucom.2018.03.014
中图分类号
TP18 [人工智能理论];
学科分类号
081104 ; 0812 ; 0835 ; 1405 ;
摘要
Data-driven algorithms for bearing fault diagnosis have achieved much success. However, it is difficult and even impossible to collect enough data containing real bearing damages to train the classifiers, which hinders the application of these methods in industrial environments. One feasible way to address the problem is training the classifiers with data generated from artificial bearing damages instead of real ones. In this way, the problem changes to how to extract common features shared by both kinds of data because the differences between the artificial one and the natural one always baffle the learning machine. In this paper, a novel model, deep inception net with atrous convolution (ACDIN), is proposed to cope with the problem. The contribution of this paper is threefold. First and foremost, ACDIN improves the accuracy from 75% (best results of conventional data-driven methods) to 95% on diagnosing the real bearing faults when trained with only the data generated from artificial bearing damages. Second, ACDIN takes raw temporal signals as inputs, which means that it is pre-processing free. Last, feature visualization is used to analyze the mechanism behind the high performance of the proposed model. (C) 2018 Elsevier B.V. All rights reserved.
引用
收藏
页码:61 / 71
页数:11
相关论文
共 31 条
  • [21] Deep learning
    Rusk, Nicole
    [J]. NATURE METHODS, 2016, 13 (01) : 35 - 35
  • [22] Shlens J., 2016, Conditional image synthesis with auxiliary classifier gans, DOI DOI 10.1109/LGRS.2018.2868704
  • [23] Sutskever I, 2013, INT C MACH LEARN, V28, P1139
  • [24] SZEGEDY C, 2016, PROC CVPR IEEE, P2818, DOI [DOI 10.1109/CVPR.2016.308, 10.1109/CVPR.2016.308]
  • [25] Szegedy C, 2014, Arxiv, DOI arXiv:1312.6199
  • [26] Verma N K., 2013, P 2013 IEEE C PROGN, P1, DOI [DOI 10.1109/ICPHM.2013.6621447, 10.1186/1477-3155-11-1, 10.1109/icphm.2013.6621447]
  • [27] Incremental dictionary learning for fault detection with applications to oil pipeline leakage detection
    Yan, J. C.
    Tian, C. H.
    Huang, J.
    Albertao, F.
    [J]. ELECTRONICS LETTERS, 2011, 47 (21) : 1198 - U61
  • [28] Revisiting Co-Saliency Detection: A Novel Approach Based on Two-Stage Multi-View Spectral Rotation Co-clustering
    Yao, Xiwen
    Han, Junwei
    Zhang, Dingwen
    Nie, Feiping
    [J]. IEEE TRANSACTIONS ON IMAGE PROCESSING, 2017, 26 (07) : 3196 - 3209
  • [29] A deep convolutional neural network with new training methods for bearing fault diagnosis under noisy environment and different working load
    Zhang, Wei
    Li, Chuanhao
    Peng, Gaoliang
    Chen, Yuanhang
    Zhang, Zhujun
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2018, 100 : 439 - 453
  • [30] A New Deep Learning Model for Fault Diagnosis with Good Anti-Noise and Domain Adaptation Ability on Raw Vibration Signals
    Zhang, Wei
    Peng, Gaoliang
    Li, Chuanhao
    Chen, Yuanhang
    Zhang, Zhujun
    [J]. SENSORS, 2017, 17 (02)