Scalable in situ non-destructive evaluation of additively manufactured components using process monitoring, sensor fusion, and machine learning

被引:21
作者
Snow, Zackary [1 ]
Scime, Luke [1 ]
Ziabari, Amirkoushyar [1 ]
Fisher, Brian [2 ]
Paquit, Vincent [1 ]
机构
[1] Oak Ridge Natl Lab, Oak Ridge, TN 37830 USA
[2] RTX Technol Res Ctr, East Hartford, CT USA
关键词
Additive manufacturing; Powder bed fusion; Process Monitoring; In situ sensing; Non-destructive evaluation; POWDER-BED FUSION; DEFECT DETECTION; POROSITY; MICROSTRUCTURE; RECONSTRUCTION; QUALIFICATION; PREDICTION; BEHAVIOR; SPATTER; MODELS;
D O I
10.1016/j.addma.2023.103817
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Laser Powder Bed Fusion (L-PBF) Additive Manufacturing (AM) is among the metal 3D printing technologies most broadly adopted by the manufacturing industry. However, the current industry qualification paradigm for critical-application L-PBF parts relies heavily on expensive non-destructive inspection techniques, which significantly limits the use-cases of L-PBF. In situ monitoring of the process promises a less expensive alternative to ex situ testing, but existing sensor technologies and data analysis techniques struggle to detect sub-surface flaws (e.g., porosity and cracking) on production-scale L-PBF printers. In this work, an in situ NDE (INDE) system was engineered to detect subsurface flaws detected in X-Ray Computed Tomography (XCT) directly from process monitoring data. A multilayer, multimodal data input allowed the INDE system to detect numerous subsurface flaws in the size range of 200-1000 mu m using a novel human-in-the-loop annotation procedure. Furthermore, a framework was established for generating probability-of-detection (POD) and probability-of-false-alarm (PFA) curves compliant with NDE standards by systematically comparing instances of detected subsurface flaws to post-build XCT data. We also introduce for the first time in the AM in situ sensing literature the a(90/95 )- the flaw size corresponding to a 90% detection rate on the lower 95% confidence interval of the POD curve. The INDE system successfully demonstrated POD capabilities commensurate with traditional NDE methods. Traditional ML performance metrics were also shown to be inadequate for assessing the ability of the INDE system's flaw detection performance. It is the belief of the authors that future studies should adopt the POD and PFA approach outlined here to provide better insight into the utility of process monitoring for AM.
引用
收藏
页数:18
相关论文
共 67 条
[1]   A deep learning-based model for defect detection in laser-powder bed fusion using in-situ thermographic monitoring [J].
Baumgartl, Hermann ;
Tomas, Josef ;
Buettner, Ricardo ;
Merkel, Markus .
PROGRESS IN ADDITIVE MANUFACTURING, 2020, 5 (03) :277-285
[2]   Machine learning-based image processing for on-line defect recognition in additive manufacturing [J].
Caggiano, Alessandra ;
Zhang, Jianjing ;
Alfieri, Vittorio ;
Caiazzo, Fabrizia ;
Gao, Robert ;
Teti, Roberto .
CIRP ANNALS-MANUFACTURING TECHNOLOGY, 2019, 68 (01) :451-454
[3]   OBJECT MODELING BY REGISTRATION OF MULTIPLE RANGE IMAGES [J].
CHEN, Y ;
MEDIONI, G .
IMAGE AND VISION COMPUTING, 1992, 10 (03) :145-155
[4]   In-situ Synchrotron imaging of keyhole mode multi-layer laser powder bed fusion additive manufacturing [J].
Chen, Yunhui ;
Clark, Samuel J. ;
Leung, Chu Lun Alex ;
Sinclair, Lorna ;
Marussi, Sebastian ;
Olbinado, Margie P. ;
Boller, Elodie ;
Rack, Alexander ;
Todd, Iain ;
Lee, Peter D. .
APPLIED MATERIALS TODAY, 2020, 20
[5]  
Craeghs T., Online Quality Control of Selective Laser Melting, P15
[6]  
Cross C.E., 2006, INT TIT C
[7]   Synchrotron-Based X-ray Microtomography Characterization of the Effect of Processing Variables on Porosity Formation in Laser Power-Bed Additive Manufacturing of Ti-6Al-4V [J].
Cunningham, Ross ;
Narra, Sneha P. ;
Montgomery, Colt ;
Beuth, Jack ;
Rollett, A. D. .
JOM, 2017, 69 (03) :479-484
[8]   A method for objectively evaluating the defect detection performance of in-situ monitoring systems [J].
de Winton, Henry C. ;
Cegla, Frederic ;
Hooper, Paul A. .
ADDITIVE MANUFACTURING, 2021, 48
[9]  
Department of Defense, 2009, MIL-HDBK-1823A: Nondestructive Evaluation System Reliability Assessment
[10]   Correlation of spatter behavior and process zone formation in powder bed fusion of metals [J].
Eschner, Eric ;
Staudt, Tobias ;
Schmidt, Michael .
CIRP ANNALS-MANUFACTURING TECHNOLOGY, 2020, 69 (01) :209-212