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Automatic Borescope Damage Assessments for Gas Turbine Blades via Deep Learning

机译:通过深度学习自动Borescope燃气轮机叶片的损伤评估

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To maximise fuel economy, bladed components in aero-engines operate close to material limits. The severe operating environment leads to in-service damage on compressor and turbine blades, having a profound and immediate impact on the performance of the engine. Current methods of blade visual inspection are mainly based on borescope imaging. During these inspections, the sentencing of components under inspection requires significant manual effort, with a lack of systematic approaches to avoid human biases. To perform fast and accurate sentencing, we propose an automatic workflow based on deep learning for detecting damages present on rotor blades using borescope videos. Building upon state-of-the-art methods from computer vision, we show that damage statistics can be presented for each blade in a blade row separately, and demonstrate the workflow on two borescope videos.
机译:为了最大化燃油经济性,航空发动机的叶片部件靠近材料限制。 严重的操作环境导致压缩机和涡轮机叶片的服务损坏,对发动机的性能产生深远和立即影响。 目前的刀片视觉检查方法主要基于Borescope成像。 在这些检查期间,检查中的组件的判决需要重大的手动努力,缺乏避免人类偏见的系统方法。 为了执行快速准确的判决,我们提出了一种基于深度学习的自动工作流程,用于使用Borescope视频检测转子叶片上存在的损坏。 从计算机视觉上建立最先进的方法,我们表明,可以单独为刀片行中的每个刀片呈现损坏统计数据,并在两个Borescope视频上展示工作流程。

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