Review of machine learning applications in powder bed fusion technology for part production
Additive manufacturing (AM) has become a viable option for production of industrial parts to meet the growing demands for customized components with complex geometry within a short lead time. Powder bed fusion (PBF) technology is often favored for its superior geometrical resolution and system st...
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sg-ntu-dr.10356-886942020-09-24T20:12:37Z Review of machine learning applications in powder bed fusion technology for part production Huang, De Jun Li, Hua School of Mechanical and Aerospace Engineering Proceedings of the 3rd International Conference on Progress in Additive Manufacturing (Pro-AM 2018) Singapore Centre for 3D Printing DRNTU::Engineering::Mechanical engineering::Prototyping Machine Learning Additive Manufacturing Additive manufacturing (AM) has become a viable option for production of industrial parts to meet the growing demands for customized components with complex geometry within a short lead time. Powder bed fusion (PBF) technology is often favored for its superior geometrical resolution and system stability. In the perspective of PBF machine users, the part production cycle can be broadly divided to three stages: the preparation stage, the printing stage and the postprocessing stage. The complexity in each stage gives rise to a challenging task for process control and quality assurance. The rising of machine learning in recent years sheds light on tackling this multi-factorial challenge in order to improve the overall performance of AM for part production. This article provides a review of machine learning techniques that are applied in or relevant to the part production cycle in PBF systems. The studies to date have showed segmented applications of machine learning techniques in different processes related to AM. To gain insight into the system behavior of PBF machines, more efforts could be put into constructing effective data representations and performing holistic analyses for the entire production cycle. EDB (Economic Devt. Board, S’pore) Published version 2018-09-13T07:17:38Z 2019-12-06T17:09:00Z 2018-09-13T07:17:38Z 2019-12-06T17:09:00Z 2018 Conference Paper Huang, D. J., & Li, H. (2018). Review of machine learning applications in powder bed fusion technology for part production. Proceedings of the 3rd International Conference on Progress in Additive Manufacturing (Pro-AM 2018), 709-716. doi:10.25341/D4XW2W https://hdl.handle.net/10356/88694 http://hdl.handle.net/10220/46003 10.25341/D4XW2W en © 2018 Nanyang Technological University. Published by Nanyang Technological University, Singapore. 8 p. application/pdf |
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DRNTU::Engineering::Mechanical engineering::Prototyping Machine Learning Additive Manufacturing Huang, De Jun Li, Hua Review of machine learning applications in powder bed fusion technology for part production |
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Additive manufacturing (AM) has become a viable option for production of
industrial parts to meet the growing demands for customized components with complex geometry
within a short lead time. Powder bed fusion (PBF) technology is often favored for its superior
geometrical resolution and system stability. In the perspective of PBF machine users, the part
production cycle can be broadly divided to three stages: the preparation stage, the printing stage
and the postprocessing stage. The complexity in each stage gives rise to a challenging task for
process control and quality assurance. The rising of machine learning in recent years sheds light on
tackling this multi-factorial challenge in order to improve the overall performance of AM for part
production. This article provides a review of machine learning techniques that are applied in or
relevant to the part production cycle in PBF systems. The studies to date have showed segmented
applications of machine learning techniques in different processes related to AM. To gain insight
into the system behavior of PBF machines, more efforts could be put into constructing effective
data representations and performing holistic analyses for the entire production cycle. |
author2 |
School of Mechanical and Aerospace Engineering |
author_facet |
School of Mechanical and Aerospace Engineering Huang, De Jun Li, Hua |
format |
Conference or Workshop Item |
author |
Huang, De Jun Li, Hua |
author_sort |
Huang, De Jun |
title |
Review of machine learning applications in powder bed fusion technology for part production |
title_short |
Review of machine learning applications in powder bed fusion technology for part production |
title_full |
Review of machine learning applications in powder bed fusion technology for part production |
title_fullStr |
Review of machine learning applications in powder bed fusion technology for part production |
title_full_unstemmed |
Review of machine learning applications in powder bed fusion technology for part production |
title_sort |
review of machine learning applications in powder bed fusion technology for part production |
publishDate |
2018 |
url |
https://hdl.handle.net/10356/88694 http://hdl.handle.net/10220/46003 |
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1681057989460492288 |