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用于检测增材制造金属缺陷的扫描电子显微镜和合成热层析成像图像的多任务学习

Multi-Task Learning of Scanning Electron Microscopy and Synthetic Thermal Tomography Images for Detection of Defects in Additively Manufactured Metals.

作者信息

Scott Sarah, Chen Wei-Ying, Heifetz Alexander

机构信息

Nuclear Science and Engineering Division, Argonne National Laboratory, Lemont, IL 60439, USA.

Department of Civil and Environmental Engineering, Duke University, Durham, NC 27708, USA.

出版信息

Sensors (Basel). 2023 Oct 14;23(20):8462. doi: 10.3390/s23208462.

Abstract

One of the key challenges in laser powder bed fusion (LPBF) additive manufacturing of metals is the appearance of microscopic pores in 3D-printed metallic structures. Quality control in LPBF can be accomplished with non-destructive imaging of the actual 3D-printed structures. Thermal tomography (TT) is a promising non-contact, non-destructive imaging method, which allows for the visualization of subsurface defects in arbitrary-sized metallic structures. However, because imaging is based on heat diffusion, TT images suffer from blurring, which increases with depth. We have been investigating the enhancement of TT imaging capability using machine learning. In this work, we introduce a novel multi-task learning (MTL) approach, which simultaneously performs the classification of synthetic TT images, and segmentation of experimental scanning electron microscopy (SEM) images. Synthetic TT images are obtained from computer simulations of metallic structures with subsurface elliptical-shaped defects, while experimental SEM images are obtained from imaging of LPBF-printed stainless-steel coupons. MTL network is implemented as a shared U-net encoder between the classification and the segmentation tasks. Results of this study show that the MTL network performs better in both the classification of synthetic TT images and the segmentation of SEM images tasks, as compared to the conventional approach when the individual tasks are performed independently of each other.

摘要

金属激光粉末床熔融(LPBF)增材制造中的关键挑战之一是在3D打印金属结构中出现微观孔隙。LPBF中的质量控制可以通过对实际3D打印结构进行无损成像来实现。热层析成像(TT)是一种很有前景的非接触、无损成像方法,它可以可视化任意尺寸金属结构中的亚表面缺陷。然而,由于成像基于热扩散,TT图像会出现模糊,且模糊程度随深度增加。我们一直在研究使用机器学习来增强TT成像能力。在这项工作中,我们引入了一种新颖的多任务学习(MTL)方法,该方法同时对合成TT图像进行分类,并对实验扫描电子显微镜(SEM)图像进行分割。合成TT图像是通过对具有亚表面椭圆形缺陷的金属结构进行计算机模拟获得的,而实验SEM图像是通过对LPBF打印的不锈钢试样进行成像获得的。MTL网络被实现为分类任务和分割任务之间共享的U-net编码器。本研究结果表明,与单独执行各个任务的传统方法相比,MTL网络在合成TT图像分类和SEM图像分割任务中表现更好。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/6f42/10611061/41ad377baf12/sensors-23-08462-g001a.jpg

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