Gearbox Fault Diagnosis Using a Deep Learning Model With Limited Data Sample

被引:177
作者
Saufi, Syahril Ramadhan [1 ,2 ]
Bin Ahmad, Zair Asrar [1 ,2 ]
Leong, Mohd Salman [1 ,2 ]
Lim, Meng Hee [2 ]
机构
[1] Univ Teknol Malaysia, Fac Engn, Sch Mech Engn, Johor Baharu 81310, Malaysia
[2] Univ Teknol Malaysia, Inst Noise & Vibrat, Kuala Lumpur 54100, Malaysia
关键词
Fault diagnosis; gearbox; image recognition; limited data sample; stacked sparse autoencoder (SSAE); CONVOLUTIONAL NEURAL-NETWORK; SUPPORT VECTOR MACHINE; VIBRATION; AUTOENCODER;
D O I
10.1109/TII.2020.2967822
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Massive volumes of data are needed for deep learning (DL) models to provide accurate diagnosis results. Numerous studies of fault diagnosis systems have demonstrated the effectiveness of DL models over shallow machine learning (SL) in terms of feature extraction, feature dimensional reduction and diagnosis performance. Occasionally, during data acquisition, a problem with a sensor renders some of the data potentially unsuitable for further analysis, leaving only a small data sample. To compensate for this deficiency, a DL model based on a stacked sparse autoencoder (SSAE) model is designed to deal with limited sample data. In this article, the fault diagnosis system is developed based on time-frequency image pattern recognition. Therefore, two gearbox datasets are used to evaluate the proposed diagnosis system. The results from the experiments prove that the proposed system is capable of achieving high diagnostic accuracy even with limited sample data. The proposed fault diagnosis system achieved 100% and 99% diagnosis performance on experimental gearbox and wind turbine gearbox datasets, respectively. The proposed diagnosis system increased diagnosis performance between 10% and 20% over the standard SSAE model. In addition, the proposed model achieved higher diagnosis performance compared to deep neural network and convolutional neural networks models.
引用
收藏
页码:6263 / 6271
页数:9
相关论文
共 48 条
  • [1] A Comprehensive Review of Swarm Optimization Algorithms
    Ab Wahab, Mohd Nadhir
    Nefti-Meziani, Samia
    Atyabi, Adham
    [J]. PLOS ONE, 2015, 10 (05):
  • [2] Ahmed HOA, 2016, IEEE IND ELEC, P6329, DOI 10.1109/IECON.2016.7793957
  • [3] A Framework for Designing the Architectures of Deep Convolutional Neural Networks
    Albelwi, Saleh
    Mahmood, Ausif
    [J]. ENTROPY, 2017, 19 (06)
  • [4] [Anonymous], 2014, HIGH SPEED GEAR DATA
  • [5] Fast computation of the kurtogram for the detection of transient faults
    Antoni, Jerome
    [J]. MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2007, 21 (01) : 108 - 124
  • [6] Bergstra James, 2015, Computational Science and Discovery, V8, DOI 10.1088/1749-4699/8/1/014008
  • [7] ACDIN: Bridging the gap between artificial and real bearing damages for bearing fault diagnosis
    Chen, Yuanhang
    Peng, Gaoliang
    Xie, Chaohao
    Zhang, Wei
    Li, Chuanhao
    Liu, Shaohui
    [J]. NEUROCOMPUTING, 2018, 294 : 61 - 71
  • [8] Deng L, 2013, IEEE INT NEW CIRC
  • [9] Planetary bearing defect detection in a commercial helicopter main gearbox with vibration and acoustic emission
    Elasha, Faris
    Greaves, Matthew
    Mba, David
    [J]. STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL, 2018, 17 (05): : 1192 - 1212
  • [10] An Intelligent Fault Diagnosis Method for Bearings with Variable Rotating Speed Based on Pythagorean Spatial Pyramid Pooling CNN
    Guo, Sheng
    Yang, Tao
    Gao, Wei
    Zhang, Chen
    Zhang, Yanping
    [J]. SENSORS, 2018, 18 (11)