Density Prediction in Powder Bed Fusion Additive Manufacturing: Machine Learning-Based Techniques

被引:24
作者
Gor, Meet [1 ]
Dobriyal, Aashutosh [1 ]
Wankhede, Vishal [1 ]
Sahlot, Pankaj [1 ]
Grzelak, Krzysztof [2 ]
Kluczynski, Janusz [2 ]
Luszczek, Jakub [2 ]
机构
[1] Pandit Deendayal Energy Univ, Sch Technol, Mech Engn, Gandhinagar 382007, India
[2] Mil Univ Technol, Fac Mech Engn, Inst Robots & Machine Design, 2 Gen S Kaliskiego St, PL-00908 Warsaw, Poland
来源
APPLIED SCIENCES-BASEL | 2022年 / 12卷 / 14期
关键词
additive manufacturing; mechanical engineering; machine learning; density prediction; artificial neural network; support vector machine; K-nearest neighbor; 316L STAINLESS-STEEL; ARTIFICIAL NEURAL-NETWORK; PROCESS PARAMETERS; MECHANICAL-PROPERTIES; POROSITY; OPTIMIZATION; MODELS; PARTS; MICROSTRUCTURE; COMBINATION;
D O I
10.3390/app12147271
中图分类号
O6 [化学];
学科分类号
0703 ;
摘要
Machine learning (ML) is one of the artificial intelligence tools which uses past data to learn the relationship between input and output and helps to predict future trends. Powder bed fusion additive manufacturing (PBF-AM) is extensively used for a wide range of applications in the industry. The AM process establishment for new material is a crucial task with trial-and-error approaches. In this work, ML techniques have been applied for the prediction of the density of PBF-AM. Density is the most vital property in evaluating the overall quality of the AM building part. The ML techniques, namely, artificial neural network (ANN), K-nearest neighbor (KNN), support vector machine (SVM), and linear regression (LR), are used to develop a model for predicting the density of the stainless steel (SS) 316L build part. These four methods are validated using R-squared values and different error functions to compare the predicted result. The ANN and SVM model performed well with the R-square value of 0.95 and 0.923, respectively, for the density prediction. The ML models would be beneficial for the prediction of the process parameters. Further, the developed ML model would also be helpful for the future application of ML in additive manufacturing.
引用
收藏
页数:18
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共 65 条
[11]   Evaluation of machine learning based models to predict the bulk density in the flash sintering process [J].
de Abreu, Mariana G. ;
Pallone, Eliria M. J. A. ;
Ferreira, Julieta A. ;
Campos, Joao V. ;
de Sousa, Rafael V. .
MATERIALS TODAY COMMUNICATIONS, 2021, 27
[12]   Influence of process parameters on part quality and mechanical properties for DMLS and SLM with iron-based materials [J].
Delgado, Jordi ;
Ciurana, Joaquim ;
Rodriguez, Ciro A. .
INTERNATIONAL JOURNAL OF ADVANCED MANUFACTURING TECHNOLOGY, 2012, 60 (5-8) :601-610
[13]   Spreading Process Maps for Powder-Bed Additive Manufacturing Derived from Physics Model-Based Machine Learning [J].
Desai, Prathamesh S. ;
Higgs, C. Fred, III .
METALS, 2019, 9 (11)
[14]   Processing and mechanical properties of porous 316L stainless steel for biomedical applications [J].
Dewidar, Montasser M. ;
Khalil, Khalil A. ;
Lim, J. K. .
TRANSACTIONS OF NONFERROUS METALS SOCIETY OF CHINA, 2007, 17 (03) :468-473
[15]   Optimization of selective laser melting process parameters for Ti-6Al-4V alloy manufacturing using deep learning [J].
Dinh Son Nguyen ;
Park, Hong Seok ;
Lee, Chang Myung .
JOURNAL OF MANUFACTURING PROCESSES, 2020, 55 :230-235
[16]   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
[17]   Using a Support Vector Machine for building a Quality Prediction Model for Center-less Honing process [J].
Gejji, Abha ;
Shukla, Shruti ;
Pimparkar, Siddhee ;
Pattharwala, Tamanna ;
Bewoor, Anand .
13TH INTERNATIONAL CONFERENCE INTERDISCIPLINARITY IN ENGINEERING (INTER-ENG 2019), 2020, 46 :600-607
[18]   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
[19]   A review on machine learning in 3D printing: applications, potential, and challenges [J].
Goh, G. D. ;
Sing, S. L. ;
Yeong, W. Y. .
ARTIFICIAL INTELLIGENCE REVIEW, 2021, 54 (01) :63-94
[20]   Additive manufacturing: A machine learning model of process-structure-property linkages for machining behavior of Ti-6Al-4V [J].
Gong, Xi ;
Zeng, Dongrui ;
Groeneveld-Meijer, Willem ;
Manogharan, Guha .
MATERIALS SCIENCE IN ADDITIVE MANUFACTURING, 2022, 1 (01)