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Representational learning for fault diagnosis of wind turbine equipment: A multi-layered extreme learning machines approach
Yang Z.-X.; Wang X.-B.; Zhong J.-H.
2016-06-01
Source PublicationEnergies
ISSN19961073
Volume9Issue:6
Abstract

Reliable and quick response fault diagnosis is crucial for the wind turbine generator system (WTGS) to avoid unplanned interruption and to reduce the maintenance cost. However, the conditional data generated from WTGS operating in a tough environment is always dynamical and high-dimensional. To address these challenges, we propose a new fault diagnosis scheme which is composed of multiple extreme learning machines (ELM) in a hierarchical structure, where a forwarding list of ELM layers is concatenated and each of them is processed independently for its corresponding role. The framework enables both representational feature learning and fault classification. The multi-layered ELM based representational learning covers functions including data preprocessing, feature extraction and dimension reduction. An ELM based autoencoder is trained to generate a hidden layer output weight matrix, which is then used to transform the input dataset into a new feature representation. Compared with the traditional feature extraction methods which may empirically wipe off some "insignificant' feature information that in fact conveys certain undiscovered important knowledge, the introduced representational learning method could overcome the loss of information content. The computed output weight matrix projects the high dimensional input vector into a compressed and orthogonally weighted distribution. The last single layer of ELM is applied for fault classification. Unlike the greedy layer wise learning method adopted in back propagation based deep learning (DL), the proposed framework does not need iterative fine-tuning of parameters. To evaluate its experimental performance, comparison tests are carried out on a wind turbine generator simulator. The results show that the proposed diagnostic framework achieves the best performance among the compared approaches in terms of accuracy and efficiency in multiple faults detection of wind turbines.

KeywordAutoencoder (Ae) Classification Extreme Learning Machines (Elm) Fault Diagnosis Wind Turbine
DOI10.3390/en9060379
URLView the original
Indexed BySCIE
Language英語English
WOS Research AreaEnergy & Fuels
WOS SubjectEnergy & Fuels
WOS IDWOS:000378854400001
Scopus ID2-s2.0-84973111598
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Citation statistics
Document TypeJournal article
CollectionDEPARTMENT OF ELECTROMECHANICAL ENGINEERING
Faculty of Science and Technology
Corresponding AuthorYang Z.-X.
AffiliationUniversidade de Macau
First Author AffilicationUniversity of Macau
Corresponding Author AffilicationUniversity of Macau
Recommended Citation
GB/T 7714
Yang Z.-X.,Wang X.-B.,Zhong J.-H.. Representational learning for fault diagnosis of wind turbine equipment: A multi-layered extreme learning machines approach[J]. Energies, 2016, 9(6).
APA Yang Z.-X.., Wang X.-B.., & Zhong J.-H. (2016). Representational learning for fault diagnosis of wind turbine equipment: A multi-layered extreme learning machines approach. Energies, 9(6).
MLA Yang Z.-X.,et al."Representational learning for fault diagnosis of wind turbine equipment: A multi-layered extreme learning machines approach".Energies 9.6(2016).
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