基于haar特征和聚类的风电叶片裂纹定位与提取

Cherif Seibi, Zachary Ward, Masoum Mohammad A.S., Mohammad Shekaramiz
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引用次数: 2

摘要

风力涡轮机叶片在运行过程中可能会遭受损坏,从而危及整个风力发电机的可靠性。这种损坏很难用常规方法检测,如果不加以解决,最终可能导致风力涡轮机的故障。本文研究了一种利用Haar-like特征定位裂纹,利用Jaya K-Means算法提取含有裂纹的图像像素点的风力发电机叶片图像裂纹检测方法。在现有技术的基础上,提出了一种改进的涡轮叶片裂纹检测方法,并用Python进行了编码。在犹他谷大学,一个有缺陷叶片的小型风力涡轮机原型机的初步结果看起来很有希望。最后,提出了继续进行本本科生课题研究的方向。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Locating and Extracting Wind Turbine Blade Cracks Using Haar-like Features and Clustering
Wind turbine blades can sustain damage during operation that can jeopardize the reliability of the entire wind power generator. This damage can be difficult to detect using conventional methods and, if unaddressed, could eventually result in the failure of the wind turbine. In this paper, a method of detecting wind turbine blade cracks from images is investigated which utilizes Haar-like features to locate cracks and the Jaya K-Means algorithm to extract the image pixels containing cracks. A modified turbine blade crack detection methodology based on existing technology is presented and coded in Python. Initial results for a small-scale wind turbine prototype with faulty blades at Utah Valley University look promising. Finally, a direction for continuing this undergraduate research project is put forth.
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