Flaw Detection in Multi-Laser Powder Bed Fusion Using In Situ Coaxial Multi-Spectral Sensing and Deep Learning

被引:5
作者
Surana, Amit [1 ]
Lynch, Matthew E. [2 ]
Nassar, Abdalla R. [3 ]
Ojard, Greg C. [2 ]
Fisher, Brian A. [4 ]
Corbin, David [3 ]
Overdorff, Ryan [5 ]
机构
[1] Raytheon Technol Res Ctr, Aerothermal & Intelligent Syst Dept, 411 Silver Lane, East Hartford, CT 06118 USA
[2] Raytheon Technol Res Ctr, Phys Sci Dept, 411 Silver Lane, East Hartford, CT 06118 USA
[3] Penn State Univ, Appl Res Lab, University Pk, PA 16802 USA
[4] Raytheon Technol Res Ctr, Addit Mfg Proc & Capabil Ctr, 411 Silver Lane, East Hartford, CT 06118 USA
[5] 3D Syst, 230 Innovat Blvd, State Coll, PA 16803 USA
来源
JOURNAL OF MANUFACTURING SCIENCE AND ENGINEERING-TRANSACTIONS OF THE ASME | 2023年 / 145卷 / 05期
关键词
additive manufacturing; inspection and quality control; sensing; monitoring; and diagnostics; deep learning; DEFECT-DETECTION;
D O I
10.1115/1.4056540
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Multi-laser powder bed fusion (M-LPBF) systems are garnering increased attention in metal additive manufacturing as they promise increased productivity and part size without sacrificing feature resolution or mechanical properties. However, M-LPBF introduces unique problems related to the interaction of multiple moving heat sources not observed in single laser systems, possibly leading to unexpected flaws and other process anomalies. Careful process modeling, planning, and monitoring are required to fully exploit M-LPBF. We present a novel in situ sensing and machine learning-based flaw detection for M-LPBF. Specifically, we consider a configuration where on-axis multi-spectral sensors are integrated and synchronized with each of the three lasers on a 3D Systems DMP Factory 500 printer. Each multi-spectral sensor monitors spectral emissions at two material-dependent wavelengths. The time series data generated from the multiple multi-spectral sensors are converted into a rasterized image per layer to be fed into a supervised deep learning (DL)-based semantic segmentation pipeline. To discriminate nominal process variations from anomalies, we explore a novel framework to incorporate context into the DL model which includes factors such as laser scan direction, processing parameters, and multi-laser proximity. We demonstrate our framework on in situ monitoring data collected during a build of carefully selected specimens seeded with surrogate lack of fusion flaws. Post-build X-ray computed tomography data are registered to the in situ data to generate ground truth labels for training and validation of the DL model.
引用
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页数:12
相关论文
共 32 条
[1]   SegNet: A Deep Convolutional Encoder-Decoder Architecture for Image Segmentation [J].
Badrinarayanan, Vijay ;
Kendall, Alex ;
Cipolla, Roberto .
IEEE TRANSACTIONS ON PATTERN ANALYSIS AND MACHINE INTELLIGENCE, 2017, 39 (12) :2481-2495
[2]   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
[3]  
Carter W., 2019, 2019 INT SOL FREEF E
[4]   Reducing lack of fusion during selective laser melting of CoCrMo alloy: Effect of laser power on geometrical features of tracks [J].
Darvish, K. ;
Chen, Z. W. ;
Pasang, T. .
MATERIALS & DESIGN, 2016, 112 :357-366
[5]   Assessment of optical emission analysis for in-process monitoring of powder bed fusion additive manufacturing [J].
Dunbar, Alexander J. ;
Nassar, Abdalla R. .
VIRTUAL AND PHYSICAL PROTOTYPING, 2018, 13 (01) :14-19
[6]   Review of in-situ process monitoring and in-situ metrology for metal additive manufacturing [J].
Everton, Sarah K. ;
Hirsch, Matthias ;
Stravroulakis, Petros ;
Leach, Richard K. ;
Clare, Adam T. .
MATERIALS & DESIGN, 2016, 95 :431-445
[7]   Heterogeneous sensing and scientific machine learning for quality assurance in laser powder bed fusion - A single-track study [J].
Gaikwad, Aniruddha ;
Giera, Brian ;
Guss, Gabriel M. ;
Forien, Jean-Baptiste ;
Matthews, Manyalibo J. ;
Rao, Prahalada .
ADDITIVE MANUFACTURING, 2020, 36
[8]   Application of supervised machine learning for defect detection during metallic powder bed fusion additive manufacturing using high resolution imaging [J].
Gobert, Christian ;
Reutzel, Edward W. ;
Petrich, Jan ;
Nassar, Abdalla R. ;
Phoha, Shashi .
ADDITIVE MANUFACTURING, 2018, 21 :517-528
[9]   In-situ measurement and monitoring methods for metal powder bed fusion: an updated review [J].
Grasso, M. ;
Remani, A. ;
Dickins, A. ;
Colosimo, B. M. ;
Leach, R. K. .
MEASUREMENT SCIENCE AND TECHNOLOGY, 2021, 32 (11)
[10]   A Comparative Study of Analytical Rosenthal, Finite Element, and Experimental Approaches in Laser Welding of AA5456 Alloy [J].
Hekmatjou, Hamidreza ;
Zeng, Zhi ;
Shen, Jiajia ;
Oliveira, J. P. ;
Naffakh-Moosavy, Homam .
METALS, 2020, 10 (04)