Wind Turbine Blade Damage Detection Using Supervised Machine Learning Algorithms

结构健康监测 支持向量机 涡轮叶片 话筒 特征选择 工程类 算法 涡轮机 特征提取 计算机科学 风力发电 结构工程 机器学习 人工智能 机械工程 电气工程 电信 声压
作者
Taylor Regan,Christopher Beale,Murat İnalpolat
出处
期刊:Journal of Vibration and Acoustics 卷期号:139 (6) 被引量:64
标识
DOI:10.1115/1.4036951
摘要

Wind turbine blades undergo high operational loads, experience variable environmental conditions, and are susceptible to failure due to defects, fatigue, and weather-induced damage. These large-scale composite structures are fundamentally enclosed acoustic cavities and currently have limited, if any, structural health monitoring (SHM) in place. A novel acoustics-based structural sensing and health monitoring technique is developed, requiring efficient algorithms for operational damage detection of cavity structures. This paper describes the selection of a set of statistical features for acoustics-based damage detection of enclosed cavities, such as wind turbine blades, as well as a systematic approach used in the identification of competent machine learning algorithms. Logistic regression (LR) and support vector machine (SVM) methods are identified and used with optimal feature selection for decision-making via binary classification algorithms. A laboratory-scale wind turbine with hollow composite blades was built for damage detection studies. This test rig allows for testing of stationary or rotating blades, of which time and frequency domain information can be collected to establish baseline characteristics. The test rig can then be used to observe any deviations from the baseline characteristics. An external microphone attached to the tower will be utilized to monitor blade health while blades are internally ensonified by wireless speakers. An initial test campaign with healthy and damaged blade specimens is carried out to arrive at several conclusions on the detectability and feature extraction capabilities required for damage detection.
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