提高风电机组运行安全性的叶片健康监测与诊断方法

Ki‐Yong Oh, Jae-Kyung Lee, Joon-Young Park, Jun-Shin Lee, B. Epureanu
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引用次数: 5

摘要

为了有效地监测叶片的健康状况和检测叶片的损伤,提出了一种新的叶片诊断方法。针对风力发电机转子的恶劣环境,采用光学传感器和无线网络实现了叶片的高分辨率实时状态监测。引入了一种将统计方法与模型信息相结合的混合算法,克服了每种方法的缺点。此外,通过机器学习算法确定报警限,提高可靠性。该算法嵌入到叶片健康监测和完整性评估系统中,并在永兴风电场的3MW风力发电机上进行了验证。
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Blade health monitoring and diagnosis method to enhance operational safety of wind turbine
In order to monitor blade health and detect any damage efficiently, a new diagnosis method for wind turbine blades was proposed. In consideration of harsh environments of a wind turbine rotor, high-resolution real-time blade condition monitoring was realized with the use of optic sensors and a wireless network. A hybrid algorithm, which merges a statistical method with model information, was introduced to overcome the weakness of each method. In addition, alarm limits are determined through a machine learning algorithm to enhance its reliability. The proposed algorithm was embedded in the Blade Health Monitoring and Integrity Evaluation System and was verified at a 3MW wind turbine of the Yeongheung wind farm.
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