增材制造组件的多尺度表征与计算机断层扫描,3D x射线显微镜和深度学习

IF 2.4 3区 材料科学 Q2 MATERIALS SCIENCE, CHARACTERIZATION & TESTING
Herminso Villarraga-Gómez, Paul Brackman, Amirkoushyar Ziabari, Obaidullah Rahman, Zackary Snow, Ravi Shahani, Katrin Bugelnig, Andriy Andreyev, Yulia Trenikhina, Nathan Johnson, Hrishikesh Bale, Julian Schulz, Edson Costa Santos
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引用次数: 0

摘要

增材制造(AM)促进了复杂几何部件的创建,推动了轻型航空航天部件、高效发动机冷却通道和定制医疗植入物的进步。然而,由于内部缺陷,表面不规则,孔隙率和残留的捕获粉末,传统检测方法通常无法实现,因此确保增材制造零件的质量和可靠性仍然具有挑战性。x射线计算机断层扫描(XCT)和3D x射线显微镜(XRM)的最新发展,特别是配备远距离分辨率(RaaD™)功能的系统,能够在从亚微米到宏观的多个尺度上对增材制造部件进行高分辨率、非破坏性评估。本文探讨了用于增材制造零件多尺度表征的现代XCT和XRM技术,重点介绍了它们检测和分析气孔、裂纹、夹杂物和表面粗糙度等缺陷的能力,同时提供了对缺陷形成机制、材料特性和工艺引起的变化的见解。深度学习(DL)框架的集成,包括Simurgh、DeepRecon和DeepScout,通过减少扫描时间、提高分辨率恢复、即使在有限的投影数据下也能准确检测缺陷,增强了XCT/XRM工作流程。这些基于dl的方法克服了传统重建技术的局限性,能够更快、更可靠地表征密集材料,如Inconel 718和新型合金,如AlCe。应用包括工艺参数优化、高通量质量控制和多阶段增材制造工艺评估,dl增强的工作流程将分析时间从几周缩短到几天。相关成像方法进一步验证了XCT和XRM数据与物理切片样品的扫描电子显微镜(SEM)图像,确认了基于dl的重建的准确性,并能够进行全面的缺陷分析。虽然在将深度学习模型推广到不同的材料和成像条件方面仍然存在挑战,但分辨率、降噪和缺陷检测方面的改进凸显了这些方法的变革潜力。这种多尺度和相关的方法可以精确识别和关联微结构特征与增材制造组件的整体性能。通过集成先进的XCT、XRM和DL技术,本文展示了增材制造表征的重大飞跃,为加工参数、微观结构和零件性能之间的关系提供了有价值的见解,并推动了创新,提高了增材制造产品的质量和可靠性,以满足苛刻的工业应用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Multiscale Characterization of Additive Manufacturing Components with Computed Tomography, 3D X-ray Microscopy, and Deep Learning

Additive manufacturing (AM) facilitates the creation of complex-geometry parts, driving advancements in lightweight aerospace components, high-efficiency engine cooling channels, and customized medical implants. However, ensuring the quality and reliability of AM parts remains challenging due to internal defects, surface irregularities, porosity, and residual trapped powder, which are often inaccessible to traditional inspection methods. Recent developments in X-ray computed tomography (XCT) and 3D X-ray microscopy (XRM), particularly systems equipped with resolution-at-a-distance (RaaD™) capabilities, enable high-resolution, non-destructive evaluation of AM components across multiple scales, from sub-micrometer to macroscopic levels. This paper explores modern XCT and XRM techniques for multiscale characterization of AM parts, focusing on their ability to detect and analyze defects such as porosity, cracks, inclusions, and surface roughness, while offering insights into defect formation mechanisms, material properties, and process-induced variations. The integration of deep learning (DL) frameworks, including Simurgh, DeepRecon, and DeepScout, enhances XCT/XRM workflows by reducing scan times, improving resolution recovery, and enabling accurate defect detection even with limited projection data. These DL-based methods overcome limitations of traditional reconstruction techniques, enabling faster, more reliable characterization of dense materials like Inconel 718 and novel alloys such as AlCe. Applications include process parameter optimization, high-throughput quality control, and multistage AM process evaluation, with DL-enhanced workflows accelerating analysis times from weeks to days. Correlative imaging approaches further validate XCT and XRM data against scanning electron microscopy (SEM) images of physically sectioned samples, confirming the accuracy of DL-based reconstructions and enabling comprehensive defect analysis. While challenges remain in generalizing DL models to diverse materials and imaging conditions, improvements in resolution, noise reduction, and defect detection highlight the transformative potential of these methods. This multiscale and correlative approach enables precise identification and correlation of microstructural features with the overall performance of AM components. By integrating advanced XCT, XRM, and DL techniques, this paper demonstrates a significant leap forward in AM characterization, offering valuable insights into the relationships between processing parameters, microstructure, and part performance, and driving innovations that enhance the quality and reliability of AM products for demanding industrial applications.

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来源期刊
Journal of Nondestructive Evaluation
Journal of Nondestructive Evaluation 工程技术-材料科学:表征与测试
CiteScore
4.90
自引率
7.10%
发文量
67
审稿时长
9 months
期刊介绍: Journal of Nondestructive Evaluation provides a forum for the broad range of scientific and engineering activities involved in developing a quantitative nondestructive evaluation (NDE) capability. This interdisciplinary journal publishes papers on the development of new equipment, analyses, and approaches to nondestructive measurements.
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