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Videoscope-based inspection of turbofan engine blades using convolutional neural networks and image processing

机译:使用卷积神经网络和图像处理的基于视频镜的涡扇发动机叶片检查

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摘要

A typical aircraft engine consists of fans, compressors, turbines, and so on, and each is made of multiple layers of blades. Discovering the site of damages among the large number of blades during aircraft engine maintenance is quite important. However, it is impossible to look directly into the engine unless it is disassembled. For this reason, optical equipment such as a videoscope is used to visually inspect the blades of an engine through inspection holes. The videoscope inspection method has some obvious drawbacks such as the long-time attention on microscopic video feed and high labor intensity. In this research, we developed a damage recognition algorithm using convolutional neural networks and some image-processing techniques related to feature point extraction and matching in order to improve the videoscope inspection method. The image-processing techniques were mainly used for the preprocessing of the videoscope images, from which a suspected damaged region is selected after the preprocessing. The suspected region is finally classified as damaged or normal by the pre-trained convolutional neural networks. We trained the convolutional neural networks 2000 times by using data from 380 images and calculated the classification accuracy using data from 40 images. After repeating the above procedure 50 times with the data randomly divided into training and test groups, an average classification accuracy of 95.2% for each image and a damage detectability of 100% in video were obtained. For verification of the proposed approach, the convolutional neural network part was compared with the traditional neural network, and the preprocessing was compared with the region proposal network of the faster region-based convolutional neural networks. In addition, we developed a platform based on the developed damage recognition algorithm and conducted field tests with a videoscope for a real engine. The damage detection AI platform was successfully applied to the inspection video probed in an in-service engine.
机译:典型的飞机发动机由风扇,压缩机,涡轮等组成,每个发动机由多层叶片组成。在飞机发动机维护期间发现大量叶片中的损坏部位非常重要。但是,除非将其拆卸,否则不可能直接观察发动机。由于这个原因,使用诸如视频镜的光学设备来通过检查孔目视检查发动机的叶片。内窥镜检查方法有一些明显的缺点,例如长期关注显微视频输入和劳动强度大。在这项研究中,我们开发了一种使用卷积神经网络和一些与特征点提取和匹配有关的图像处理技术的损伤识别算法,以改进视频检查方法。图像处理技术主要用于视频镜图像的预处理,在预处理之后从中选择可疑的损坏区域。最后,通过预训练的卷积神经网络将可疑区域分类为损坏或正常。我们使用380张图像的数据对卷积神经网络进行了2000次训练,并使用40张图像的数据计算了分类精度。将数据随机分为训练和测试组重复上述步骤50次后,每个图像的平均分类准确度为95.2%,视频中的损坏检测率为100%。为了验证所提出的方法,将卷积神经网络部分与传统神经网络进行了比较,并将预处理与基于区域的快速卷积神经网络的区域建议网络进行了比较。此外,我们基于开发的损伤识别算法开发了一个平台,并使用视频镜对真实发动机进行了现场测试。损坏检测AI平台已成功应用于在役引擎中探查的检查视频。

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