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首页> 外文期刊>Procedia CIRP >Automatic Optical Surface Inspection of Wind Turbine Rotor Blades using Convolutional Neural Networks
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Automatic Optical Surface Inspection of Wind Turbine Rotor Blades using Convolutional Neural Networks

机译:卷积神经网络对风力涡轮机转子叶片的光学表面自动检测

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摘要

The operation of wind turbines includes the regular surface inspection of their rotor blades. This leads to considerable downtimes and expenses due to the manual inspection process. A possible solution is the automation of this process by using drones or robots. In this article, we present a key component for such an approach by automating the visual surface inspection with convolutional neural networks (CNN). We provide insights into CNN model selection based on available hardware and training data. We further show that all CNN models reach over 96 % median classification accuracy with the best model, ResNet50, reaching 97.4 %.
机译:风力涡轮机的运行包括对其转子叶片的定期表面检查。由于手动检查过程,这导致大量的停机时间和费用。一种可能的解决方案是使用无人机或机器人来自动化该过程。在本文中,我们通过卷积神经网络(CNN)自动执行视觉表面检查,提出了这种方法的关键组件。我们根据可用的硬件和培训数据提供有关CNN模型选择的见解。我们进一步显示,所有CNN模型的中位数分类准确率均超过96%,而最佳模型ResNet50达到97.4%。

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