An Intelligent Fault Diagnosis Method Using Unsupervised Feature Learning Towards Mechanical Big Data

被引:981
作者
Lei, Yaguo [1 ]
Jia, Feng [1 ]
Lin, Jing [1 ]
Xing, Saibo [1 ]
Ding, Steven X. [2 ]
机构
[1] Xi An Jiao Tong Univ, State Key Lab Mfg Syst Engn, Xian 710049, Peoples R China
[2] Univ Duisburg Essen, Inst Automat Control & Complex Syst, D-47057 Duisburg, Germany
基金
中国国家自然科学基金;
关键词
Intelligent fault diagnosis; mechanical big data; softmax regression; sparse filtering; unsupervised feature learning; CLASSIFICATION; CHALLENGES;
D O I
10.1109/TIE.2016.2519325
中图分类号
TP [自动化技术、计算机技术];
学科分类号
0812 ;
摘要
Intelligent fault diagnosis is a promising tool to deal with mechanical big data due to its ability in rapidly and efficiently processing collected signals and providing accurate diagnosis results. In traditional intelligent diagnosis methods, however, the features are manually extracted depending on prior knowledge and diagnostic expertise. Such processes take advantage of human ingenuity but are time-consuming and labor-intensive. Inspired by the idea of unsupervised feature learning that uses artificial intelligence techniques to learn features from raw data, a two-stage learning method is proposed for intelligent diagnosis of machines. In the first learning stage of the method, sparse filtering, an unsupervised two-layer neural network, is used to directly learn features from mechanical vibration signals. In the second stage, softmax regression is employed to classify the health conditions based on the learned features. The proposed method is validated by a motor bearing dataset and a locomotive bearing dataset, respectively. The results show that the proposed method obtains fairly high diagnosis accuracies and is superior to the existing methods for the motor bearing dataset. Because of learning features adaptively, the proposed method reduces the need of human labor and makes intelligent fault diagnosis handle big data more easily.
引用
收藏
页码:3137 / 3147
页数:11
相关论文
共 51 条
[41]   A Combined Adaptive Neural Network and Nonlinear Model Predictive Control for Multirate Networked Industrial Process Control [J].
Wang, Tong ;
Gao, Huijun ;
Qiu, Jianbin .
IEEE TRANSACTIONS ON NEURAL NETWORKS AND LEARNING SYSTEMS, 2016, 27 (02) :416-425
[42]  
Willmore B, 2001, NETWORK-COMP NEURAL, V12, P255, DOI 10.1088/0954-898X/12/3/302
[43]   Natural computing for mechanical systems research: A tutorial overview [J].
Worden, Keith ;
Staszewski, Wieslaw J. ;
Hensman, James J. .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2011, 25 (01) :4-111
[44]   Data Mining with Big Data [J].
Wu, Xindong ;
Zhu, Xingquan ;
Wu, Gong-Qing ;
Ding, Wei .
IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING, 2014, 26 (01) :97-107
[45]   Big Data for Modern Industry: Challenges and Trends [J].
Yin, Shen ;
Kaynak, Okyay .
PROCEEDINGS OF THE IEEE, 2015, 103 (02) :143-146
[46]   A Review on Basic Data-Driven Approaches for Industrial Process Monitoring [J].
Yin, Shen ;
Ding, Steven X. ;
Xie, Xiaochen ;
Luo, Hao .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2014, 61 (11) :6418-6428
[47]   WPD-PCA-Based Laser Welding Process Monitoring and Defects Diagnosis by Using FNN and SVM [J].
You, Deyong ;
Gao, Xiangdong ;
Katayama, Seiji .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2015, 62 (01) :628-636
[48]   A nonlinear probabilistic method and contribution analysis for machine condition monitoring [J].
Yu, Jianbo .
MECHANICAL SYSTEMS AND SIGNAL PROCESSING, 2013, 37 (1-2) :293-314
[49]   Local and Nonlocal Preserving Projection for Bearing Defect Classification and Performance Assessment [J].
Yu, Jianbo .
IEEE TRANSACTIONS ON INDUSTRIAL ELECTRONICS, 2012, 59 (05) :2363-2376
[50]  
Yu K, 2011, PROC CVPR IEEE, P1713, DOI 10.1109/CVPR.2011.5995732