Nondestructive testing (NDT) is widely applied to defect identification of turbine components during manufacturing and operation. Operational efficiency is key for gas turbine OEM (Original Equipment Manufacturers). Automating the inspection process as much as possible, while minimizing the uncertainties involved, is thus crucial. We propose a model based on RetinaNet to identify drilling defects in X-ray images of turbine blades. The application is challenging due to the large image resolutions in which defects are very small and hardly captured by the commonly used anchor sizes, and also due to the small size of the available dataset. As a matter of fact, all these issues are pretty common in the application of Deep Learning-based object detection models to industrial defect data. We overcome such issues using open source models, splitting the input images into tiles and scaling them up, applying heavy data augmentation, and optimizing the anchor size and aspect ratios with a differential evolution solver. We validate the model with $3$-fold cross-validation, showing a very high accuracy in identifying images with defects. We also define a set of best practices which can help other practitioners overcome similar challenges.
翻译:在制造和操作期间,对涡轮机部件进行非破坏性测试(NDT)被广泛应用到对涡轮机 OEM(原件设备制造商)的缺陷识别上。操作效率是燃气涡轮机 OEM(原件设备制造商)的关键。因此,尽可能使检查过程自动化,同时尽量减少所涉及的不确定性,至关重要。我们提议基于RetinaNet的模型,以查明涡轮刀片X射线图像中的钻探缺陷。由于图像分辨率大,缺陷非常小,很难被常用的锚标尺寸所捕捉到,而且现有数据集规模很小,因此应用起来具有挑战性。事实上,所有这些问题都非常常见。在深学习天体探测模型应用于工业缺陷数据中十分常见。我们用开放源模型克服了这些问题,将输入图像分成砖块块,运用重数据增强,并用差分变解解解器优化锚大小和方位比。我们用三美元的跨倍的校准模型,显示有缺陷的图像的精确度非常高。我们还界定了一套最佳做法,可以帮助其他从业人员克服类似挑战。