In this manuscript, an image analytics based deep learning framework for wind turbine blade surface damage detection is proposed. Turbine blade(s) which carry approximately one-third of a turbine weight are susceptible to damage and can cause sudden malfunction of a grid-connected wind energy conversion system. The surface damage detection of wind turbine blade requires a large dataset so as to detect a type of damage at an early stage. Turbine blade images are captured via aerial imagery. Upon inspection, it is found that the image dataset was limited and hence image augmentation is applied to improve blade image dataset. The approach is modeled as a multi-class supervised learning problem and deep learning methods like Convolutional neural network (CNN), VGG16-RCNN and AlexNet are tested for determining the potential capability of turbine blade surface damage.
翻译:在本手稿中,提议为探测风力涡轮机刀片表面损坏建立一个基于图像分析的深层学习框架。带有大约三分之一涡轮机重量的涡轮刀很容易损坏,并可能造成连接网状风能转换系统的突然故障。风力涡轮机刀片的表面损坏探测需要庞大的数据集,以便早期发现损坏的类型。涡轮机刀片图像通过空中图像捕捉。经检查发现,图像数据集有限,因此图像扩增用于改进刀片图像数据集。该方法以多级监管的学习问题和深层学习方法为模型,如Convolutional神经网络(CNN)、VGG16-RCNN和AlexNet, 测试以确定涡轮机刀片表面损坏的潜在能力。