DocumentCode :
141567
Title :
Performance analysis of extreme learning machine for automatic diagnosis of electrical submersible pump conditions
Author :
de Assis Boldt, Francisco ; Rauber, Thomas W. ; Varejao, Flavio M. ; Pellegrini Ribeiro, Marcos
Author_Institution :
Dept. de Inf., Univ. Fed. do Espirito Santo, Vitoria, Brazil
fYear :
2014
fDate :
27-30 July 2014
Firstpage :
67
Lastpage :
72
Abstract :
This work presents a performance analysis of the Extreme Learning Machine (ELM) compared to the Support Vector Machine (SVM) and K-Nearest Neighbor (K-NN) classifiers for automatic diagnosis of machine conditions. Tests were performed using 5,314 real examples extracted from electrical submersible pumps. The vibration signal extraction was executed in laboratory and the samples were labeled by experts. Two feature extraction models were employed, statistical features from the time and frequency domains and amplitude peaks of harmonics and subharmonics of the shaft rotation frequency. Sequential feature selection was applied to improve classifier performance and to reduce dataset dimensionality. Experimental results suggest that the ELM may be used as a classification algorithm in automatic diagnosis systems. In certain scenarios, the ELM can outperform SVM regarding the quality of results and training speed.
Keywords :
condition monitoring; fault diagnosis; feature extraction; feedforward neural nets; offshore installations; petroleum industry; production engineering computing; production equipment; pumps; shafts; signal processing; time-frequency analysis; vibrations; automatic diagnosis systems; automatic machine condition diagnosis; classification algorithm; classifier performance improvement; dataset dimensionality reduction; electrical submersible pump conditions; electrical submersible pumps; extreme learning machine; feature extraction models; frequency domains; offshore oil exploration; performance analysis; sequential feature selection; shaft rotation frequency harmonics; shaft rotation frequency subharmonics; statistical features; time domains; vibration signal extraction; Accelerometers; Accuracy; Feature extraction; Frequency-domain analysis; Harmonic analysis; Shafts; Support vector machines;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Industrial Informatics (INDIN), 2014 12th IEEE International Conference on
Conference_Location :
Porto Alegre
Type :
conf
DOI :
10.1109/INDIN.2014.6945485
Filename :
6945485
Link To Document :
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