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Image-based damage recognition of wind turbine blades

机译:基于图像的风力涡轮机叶片的损伤识别

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The wind turbine blades are the key part of converting wind energy into electrical energy. Currently the fault diagnosis of blades is mainly dependent on manual visual inspections. In this paper, an image based fault diagnosis method for wind turbine blades is proposed. The blade damage recognition is realized by two-stage learning. The first learning stage is deep feature extractor learning stage. A deep convolutional neural network (ConvNet) is built and trained on the ILSVRC dataset, owing to the lack of the blade damage images. The trained ConvNet without the last two layer is extracted as the feature extractor of the blade images. The second learning stage is pattern learning stage. Deep features of the training blade images are extracted and used to train a classifier to identify the damage type of the blades. The damage identification of the wind blades can be realized by the combination of the deep feature extractor and the classifier. The wind turbine blade images in the experiment were taken at a real wind power station. Three conventional feature extraction methods, which are Histogram of Oriented Gradient, Scale Invariant Feature Transform and Texture, are adopted to compared with the proposed method. The effectiveness of the proposed approach is validated through experiments, and the results show that for the damage recognition of wind turbine blades.
机译:风力涡轮机叶片是将风能转换成电能的关键部分。目前刀片的故障诊断主要取决于手动视觉检查。本文提出了一种基于图像的风力涡轮机叶片的故障诊断方法。叶片损坏识别由两阶段学习实现。第一学习阶段是深度特征提取器学习阶段。由于叶片损坏图像缺乏缺乏叶片损坏,构建了深度卷积神经网络(GROMNET),并在ILSVRC数据集上进行了培训。没有最后两层图层的训练转接作为刀片图像的特征提取器。第二学习阶段是模式学习阶段。提取训练刀片图像的深度特征,并用于训练分类器以识别刀片的损坏类型。通过深度特征提取器和分类器的组合可以实现风叶片的损坏识别。实验中的风力涡轮机叶片图像在真正的风力电站处采取。采用三种常规特征提取方法,其是取向梯度的直方图,比例不变特征变换和纹理,与所提出的方法相比。通过实验验证了所提出的方法的有效性,结果表明,用于风力涡轮机叶片的损坏识别。

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