Damage mode identification of composite wind turbine blade under accelerated fatigue loads using acoustic emission and machine learning

Pengfei Liu, Dong Xu, Jingguo Li,Zhiping Chen, Shuaibang Wang,Jianxing Leng,Ronghua Zhu,Lei Jiao,Weisheng Liu, Zhongxiang Li

STRUCTURAL HEALTH MONITORING-AN INTERNATIONAL JOURNAL(2020)

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摘要
This article studies experimentally the damage behaviors of a 59.5-m-long composite wind turbine blade under accelerated fatigue loads using acoustic emission technique. First, the spectral analysis using the fast Fourier transform is used to study the components of acoustic emission signals. Then, three important objectives including the attenuation behaviors of acoustic emission waves, the arrangement of sensors as well as the detection and positioning of defect sources in the composite blade by developing the time-difference method among different acoustic emission sensors are successfully reached. Furthermore, the clustering analysis using the bisectingK-means method is performed to identify different damage modes for acoustic emission signal sources. This work provides a theoretical and technique support for safety precaution and maintaining of in-service blades.
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关键词
Wind turbine blade,fatigue tests,defect detection,damage mode identification,acoustic emission,machine learning
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