离散小波变换在风电叶片状态监测与故障检测中的应用实验研究

Ahmed Ogaili, Mohsin Hamzah, Alaa Jaber, Ehsan Ghane
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引用次数: 0

摘要

有效的结构监测可以最大限度地提高风力涡轮机的效率,这是一种至关重要的可再生能源资产。采用先进的状态监测技术对提高可靠性至关重要。本实验展示了如何利用DWT和FFT对风力发电机叶片进行故障检测。DWT允许在受控风速下,对健康和腐蚀的实验室级涡轮叶片的振动信号进行多分辨率分析。采用5级小波变换分解方法,对局部故障信息进行频率子带识别。第5级近似系数的FFT后处理显示了叶片状态之间精确的模态频移。健康叶片的主导频率为16 Hz,与操作动态相匹配。侵蚀引起了24赫兹的故障信号,这在完整的叶片中是不存在的。在8 Hz模态分离下,叶片状态自动分类准确率为98%。DWT的高灵敏度来源于非平稳信号滤波和FFT的高分辨率频谱量化。比较度量分析证实了DWT优于FFT和统计方法。集成的方法结合了互补的技术来检测以前不被注意到的小缺陷。这项研究证实了利用DWT的优势在未来监测风力涡轮机结构健康状况的有效性。该方法可以从基于时间的维护切换到数据驱动的预测,通过早期检测故障前兆来提高可靠性。这项研究证实了DWT在识别风力涡轮机叶片故障和推进关键技术以防止灾难性故障方面的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Application of Discrete Wavelet Transform for Condition Monitoring and Fault Detection in Wind Turbine Blades: An Experimental Study
Effective structural monitoring maximizes efficiency in wind turbines, a crucial renewable energy asset. Using advanced condition monitoring techniques is crucial for reliability. This experiment shows how to use DWT and FFT for wind turbine blade fault detection. DWT allowed for multiresolution analysis of vibration signals from a healthy and eroded lab-scale turbine blade under controlled wind speeds. A 5-level DWT decomposition identified frequency sub-bands with localized fault information. The FFT post-processing of level 5 approximation coefficients revealed precise modal frequency shifts between blade states. The healthy blade showed a dominant 16 Hz mode that matched operational dynamics. Erosion caused a 24 Hz fault signature that was not present in the intact blade. Automated blade state classification was 98% accurate with 8 Hz modal separation. DWT's high sensitivity comes from nonstationary signal filtering and FFT's high-resolution spectral quantification. Comparative metric analysis confirmed DWT's superiority over FFT and statistical methods. The integrated approach combined complementary techniques to detect small defects that were previously unnoticeable. This study confirms the effectiveness of using DWT's strengths for monitoring wind turbine structural health in the future. The approach enables switching from time-based maintenance to data-driven prognostics, improving reliability by detecting failure precursors early. This study confirms DWT's effectiveness in identifying wind turbine blade faults and advancing critical techniques to prevent catastrophic failures.‎
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