基于三维几何扫描仪的焊接缺陷检测与分类数据挖掘样本设计

Papatsorn Singhatham, Suthada Srigate, Sansiri Tanachutiwat
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引用次数: 2

摘要

利用深度学习技术对焊接缺陷进行检测和分类,可以提高焊接行业的质量和生产率。然而,开发基于监督学习方法的深度学习模型需要大量的良焊和缺陷焊数据。现在的焊接技术人员受过良好的培训,很少产生不完美的焊缝。因此,缺乏缺陷焊接样品对设计开发深度学习模型所需的焊接缺陷样品提出了重大挑战。本文基于外表面缺陷初始质量评价标准,建立了一种模型和方法。根据ISO 9712和美国机械工程师学会(ASME)的要求,利用该方法在铝板试样上产生缺陷,设计了三维激光扫描仪检测焊缝裂纹的实验,并通过视觉测试技术(VT)生成焊接质量评估的三维模型。根据ISO-6520-1的要求,将设计好的校准试样模型用作制造缺陷(裂纹)的工具。根据产生裂纹的设计原则,这些裂纹位于焊缝根部、热影响区(HAZ)和母材处。我们根据裂缝的位置划分裂缝的大小来确定裂缝的大小,从而在一个试样中得到总共47个裂缝。在这种设计原则下,试样要真实,检测软件要有很高的精度,才能正确检测和分类实际焊珠上的裂纹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Designing of Welding Defect Samples for Data Mining in Defect Detection and Classification using 3D Geometric Scanners
Using a deep learning technology for welding defect detection and classification could improve the quality and productivity of the welding industry. However, developing the deep learning model based on the supervised learning method requires a large amount of data for good and defective welding. The welding technicians nowadays have been well trained and rarely produce the imperfect welds. Thus, lack of defective welding samples poses a major challenge to design welds defect samples necessary for developing the deep learning model. In this paper, a model and a method are established based on the standard for initial quality assessment in external surface imperfection. The method is used to create imperfection on aluminum plate specimen and to design an experiment using a 3D laser scanner for detecting cracks on weld bead and to generate three-dimensional models for welding quality assessment by visual testing technic (VT) in accordance with the ISO 9712 and American Society of Mechanical Engineer (ASME). The model of the calibration specimen that has been designed is used as a tool to create imperfection (crack) according to ISO-6520-1. As per the design principles of creating cracks, these are at the root of weld, at the heat-affected zone (HAZ) and at the parent material. We determine the size of the cracks by dividing the size according to the location of the cracks in order to obtain a total of 47 cracks in 1 specimen. With this design principle, the specimens will be realistic and it is necessary for the detection software to be highly accurate to correctly detect and classify cracks on actual weld beads.
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