Title
Incipient Fault Diagnosis Based on DNN with Transfer Learning
Abstract
Diagnosis of incipient fault is critical for safe operation of the system because it can prevent disastrous accidents from happening by diagnosing the early fault before deterioration. Deep learning is efficient in feature extraction but it requires a large number of samples to train traditional deep neural network (DNN). It is thus inevitable that the efficiency of DNN will be affected when it is applied to incipient fault diagnosis for there are usually a very limited number of incipient fault samples. Furthermore, a large amount of information involved in significant fault samples was not adequately used for incipient fault diagnosis. To solve this problem, this paper proposes an incipient fault diagnosis model with DNN-based transfer learning. The model can extract fault feature involved in a large number of significant fault samples and apply it to extract insignificant fault feature with a small number of incipient fault samples. In this way, the proposed transfer learning method can efficiently diagnose incipient fault in the case when only a limited number of incipient fault data is available. The efficiency of the proposed model is demonstrated by utilizing the Case Western Reserve University bearing data set.
Year
DOI
Venue
2018
10.1109/ICCAIS.2018.8570702
2018 International Conference on Control, Automation and Information Sciences (ICCAIS)
Keywords
Field
DocType
incipient fault diagnosis,DNN,transfer learning
Data mining,Transfer of learning,Control engineering,Feature extraction,Bearing (mechanical),Artificial intelligence,Deep learning,Engineering,Artificial neural network
Conference
ISSN
ISBN
Citations 
2475-790X
978-1-5386-6021-8
0
PageRank 
References 
Authors
0.34
12
3
Name
Order
Citations
PageRank
Danmin Chen172.16
Shuai Yang272.83
Funa Zhou3153.96