一种基于视觉的深度学习风电叶片损伤检测方法

Sahir Moreno, Miguel Peña, Alexia Toledo, Ricardo Trevino, Hiram Ponce
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引用次数: 16

摘要

风力涡轮机在清洁能源领域有着巨大的影响。然而,这些技术需要在各个方面进行改进,例如:维护,能量存储,过载或机械故障的情况。在维护中,它们经常遭受叶片损坏,通常是在露天和持续运行中。叶片中最常见的损伤有:射线冲击、磨损、切割力断裂、冻结等。由于所有这些因素,有必要开发一种预测技术,以帮助我们以比人工检查更安全、更有效的方式对叶片进行检查。在这个意义上,本文引入了一种基于深度学习视觉的方法来自动分析叶片表面的每个部分,能够检测某些故障(射线的影响,磨损和断裂)。此外,我们提出了一个概念验证,使用机器人自动检测风力涡轮机叶片的故障。实验结果验证了我们的视觉系统。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Vision-Based Method Using Deep Learning for Damage Inspection in Wind Turbine Blades
Wind turbines are having great impact in the field of clean energies. However, there is a need to improve these technologies in various aspects, such as: maintenance, energy storage, cases of overload or mechanical failure. In maintenance, they constantly suffer of damage in blades typically to be in the open air and in constant operation. The most well-known damages in blades are identified as: impact of rays, wearing, fractures by cutting forces, freezing, among others. Because of all these factors, it is necessary to develop a predictive technique to help us to do the inspections of the blades in a safer and more effective way than manual inspection. In that sense, this paper introduces a deep learning vision-based approach to automatically analyze each part of the face of the blade, capable of making the detection of certain faults (impact of rays, wear and fractures). In addition, we present a proof-of-concept using a robot to automatically detect failures in wind turbine blades. Experimental results validate our vision system.
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