Funder
Ministry of Science, ICT and Future Planning
National Research Foundation of Korea
Publisher
Korean Institute of Information Technology
Reference15 articles.
1. B. J. Kim, S. Y. Lee, Y. D. Ahn, and S. J. Kang, "Wind Turbine Blade Fault Diagnosis System Using Machine Learning", Proc. of 2017(48th) KIEE Summer Conference, Busan, Korea, pp. 1498-1499, Jul. 2017.
2. A Novel Method and Its Field Tests for Monitoring and Diagnosing Blade Health for Wind Turbines
3. C.-H. Kim, I.-S. Paek, N.-S. Yoo, and Y.-S. Nam, "Modal Analysis of a Wind Turbine Blade using FBG Sensors", Proc. of 2010 KSME spring conference, Gwangju, Korea, pp. 428-430, May 2010.
4. Structural health monitoring for a wind turbine system: a review of damage detection methods