Characterization of Additively Manufactured Circular Disks Using Traditional Computed Tomography Volume Segmentation and Machine Learning Algorithms

J. Miers, D. Moore, B.A. Branch
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Abstract

Additively manufactured (AM) components contain discontinuities, indications and defects that can change the component’s mechanical performance during high energy impact events. X-ray computed tomography (XCT) reconstructions of AM metastable titanium disks (Ti-5Al-5V-5Mo-3Cr or Ti-5553) were generated on an industrial micro-focus system. Each sample was scanned before and after high velocity impact testing. The porosity resulting from the direct metal laser sintering (DMLS) powder bed fusion machine was detected and characterized. The samples were placed in a gas gun configuration to induce a high-rate tensile load (shock test). The post-test results on the recovered disks contained incipient spall cavities. These features were identified by standard volume segmentation techniques. This inspection data is also evaluated with machine learning (ML) algorithms. A comparison between ML segmentation of the pores/cavities to standard commercial segmentation algorithms will be presented. Improvements using ML were specifically seen in the identification of pores and spall planes in regions of low x-ray attenuation (brightness and contrast). Common XCT artifacts, which include beam hardening and systematic noise, were overcome by the applied ML methods. Porosity and spall plane regions identified by the machine learning analysis were then compared to serial sectioning and scanning electron microscope (SEM) data to judge the precision and accuracy of the machine learning technique. Results show that the CT reconstructed porosity aligned well with the serial sectioned and SEM data. The only discrepancies were in the small pores near the detectability limit and other metrics dependent on the XCT reconstruction resolution.
利用传统的计算机断层扫描体分割和机器学习算法表征增材制造的圆盘
增材制造(AM)组件包含不连续,指示和缺陷,可以改变组件的机械性能在高能冲击事件。在工业微聚焦系统上生成了AM亚稳钛盘(Ti-5Al-5V-5Mo-3Cr或Ti-5553)的x射线计算机断层扫描(XCT)重建图。每个样品在高速冲击试验前后都进行了扫描。对直接金属激光烧结(DMLS)粉末床熔合机产生的孔隙率进行了检测和表征。样品被放置在气枪配置中,以诱导高速率拉伸载荷(冲击试验)。回收磁盘的后测结果中含有早期的碎片空腔。这些特征是通过标准的体积分割技术识别出来的。这些检测数据也用机器学习(ML)算法进行评估。将介绍孔/腔的ML分割与标准商业分割算法之间的比较。使用ML的改进在低x射线衰减区域(亮度和对比度)的孔隙和碎片面识别中特别明显。应用ML方法克服了常见的XCT伪影,包括波束硬化和系统噪声。然后将机器学习分析识别的孔隙度和碎屑面区域与连续切片和扫描电镜(SEM)数据进行比较,以判断机器学习技术的精度和准确性。结果表明,CT重建的孔隙度与连续切片和扫描电镜数据吻合良好。唯一的差异是在接近可探测极限的小孔隙和依赖于XCT重建分辨率的其他指标。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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