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An Overview of Condition Monitoring and Fault Diagnostic for Wind Energy Conversion System |
Hang Jun1, Zhang Jianzhong1, Cheng Ming1, Wang Wei1, Zhang Ming2 |
1. School of Electrical Engineering Southeast University Nanjing 210096 China 2. Nanjing Electric Power Company Nangjing 210096 China |
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Abstract Wind power generation is one of the most mature technologies in renewable energy and has been widely applied in the worldwide scale, where high reliability and economy have been important requirements for wind energy conversion system(WECS). Hence, the strategies to improve reliability and economy of WECS have been an interesting area for researchers. In this paper, the current situation, fault features and maintenance difficulties of WECS are introduced, and one primary effective way to improve reliability and economy, namely condition monitoring and fault diagnosis (CMFD) approach, is applied to WECS. Moreover, the state of the art in CMFD of WECS is overviewed, focusing on the main failure components, such as generator, gearbox, blade, etc. Finally, in accordance with the current problems of the CMFD technology, some possible development trends of CMFD for WECS are discussed.
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Received: 20 September 2012
Published: 25 March 2014
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Fund:Supported by the national nature science foundation of China (5113 7001 and 50977011) and by the specialized research fund for the doctoral program of higher education of China (20090092120042). |
About author:: Hang Jun male, born in 1987, Ph.D. candidate. His main research is condition monitoring and fault diagnosis of wind turbine.Zhang Jianzhong male, born in 1970, associate professor, advisor for doctoral students. His research interests include electric machine, wind power generation and condition monitoring and fault diagnosis. |
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