UM  > Faculty of Science and Technology  > DEPARTMENT OF ELECTROMECHANICAL ENGINEERING
Residential Collegefalse
Status已發表Published
Correlated EEMD and effective feature extraction for both periodic and irregular faults diagnosis in rotating machinery
Liang J.2; Zhong J.-H.2; Yang Z.-X.3
2017-10-01
Source PublicationEnergies
ISSN19961073
Volume10Issue:10
Abstract

Intelligent fault diagnosis of complex machinery is crucial for industries to reduce the maintenance cost and to improve fault prediction performance. Acoustic signal is an ideal source for diagnosis because of its inherent characteristics in terms of being non-directional and insensitive to structural resonances. However, there are also two main drawbacks of acoustic signal, one of which is the low signal to noise ratio (SNR) caused by its high sensitivity and the other one is the low computational efficiency caused by the huge data size. These would decrease the performance of the fault diagnosis system. Therefore, it is significant to develop a proper feature extraction method to improve computational efficiency and performance in both periodic and irregular fault diagnosis. To enhance SNR of the acquired acoustic signal, the correlation coefficient (CC) method is employed to eliminate the redundant intrinsic mode functions (IMF), which comes from the decomposition procedure of pre-processing known as ensemble empirical mode decomposition (EEMD), because the higher the correlated coefficient of an IMF is, the more significant fault signatures it would contain, and the redundant IMF would compromise both the SNR and the computational cost performance. Singular value decomposition (SVD) and sample Entropy (SampEn) are subsequently used to extract the fault feature, by exploiting their sensitivities to irregular and periodic fault signals, respectively. In addition, the proposed feature extraction method using sparse Bayesian based pairwise coupled extreme learning machine (PC-SBELM) outperforms the existing pairwise-coupling probabilistic neural network (PC-PNN) and pairwise-coupling relevance vector machine (PC-RVM) by 1.8%and 2%, respectively, to achieve an accuracy of 93.9%. The experiments conducted on the periodic and irregular faults in the gears and bearings have demonstrated that the proposed hybrid fault diagnosis system is effective.

KeywordAcoustic Signal Ensemble Empirical Mode Decomposition Sample Entropy Singular Value Decomposition Sparse Bayesian Extreme Learning Machine
DOI10.3390/en10101652
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaEnergy & Fuels
WOS SubjectEnergy & Fuels
WOS IDWOS:000414578400207
Scopus ID2-s2.0-85044395532
Fulltext Access
Citation statistics
Document TypeJournal article
CollectionDEPARTMENT OF ELECTROMECHANICAL ENGINEERING
Faculty of Science and Technology
Corresponding AuthorLiang J.; Zhong J.-H.; Yang Z.-X.
Affiliation1.University of Technology Sydney
2.Fuzhou University
3.Universidade de Macau
Corresponding Author AffilicationUniversity of Macau
Recommended Citation
GB/T 7714
Liang J.,Zhong J.-H.,Yang Z.-X.. Correlated EEMD and effective feature extraction for both periodic and irregular faults diagnosis in rotating machinery[J]. Energies, 2017, 10(10).
APA Liang J.., Zhong J.-H.., & Yang Z.-X. (2017). Correlated EEMD and effective feature extraction for both periodic and irregular faults diagnosis in rotating machinery. Energies, 10(10).
MLA Liang J.,et al."Correlated EEMD and effective feature extraction for both periodic and irregular faults diagnosis in rotating machinery".Energies 10.10(2017).
Files in This Item:
There are no files associated with this item.
Related Services
Recommend this item
Bookmark
Usage statistics
Export to Endnote
Google Scholar
Similar articles in Google Scholar
[Liang J.]'s Articles
[Zhong J.-H.]'s Articles
[Yang Z.-X.]'s Articles
Baidu academic
Similar articles in Baidu academic
[Liang J.]'s Articles
[Zhong J.-H.]'s Articles
[Yang Z.-X.]'s Articles
Bing Scholar
Similar articles in Bing Scholar
[Liang J.]'s Articles
[Zhong J.-H.]'s Articles
[Yang Z.-X.]'s Articles
Terms of Use
No data!
Social Bookmark/Share
All comments (0)
No comment.
 

Items in the repository are protected by copyright, with all rights reserved, unless otherwise indicated.