Progress and opportunities for machine learning in materials and processes of additive manufacturing

In recent years, there has been widespread adoption of machine learning (ML) technologies to unravel intricate relationships among diverse parameters in various additive manufacturing (AM) techniques. These ML models excel at recognizing complex patterns from extensive, well-curated datasets, the...

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Main Authors: Ng, Wei Long, Goh, Guo Liang, Goh, Guo Dong, Ten, Jason Jyi Sheuan, Yeong, Wai Yee
Other Authors: School of Mechanical and Aerospace Engineering
Format: Article
Language:English
Published: 2024
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Online Access:https://hdl.handle.net/10356/175825
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-1758252024-05-11T16:48:55Z Progress and opportunities for machine learning in materials and processes of additive manufacturing Ng, Wei Long Goh, Guo Liang Goh, Guo Dong Ten, Jason Jyi Sheuan Yeong, Wai Yee School of Mechanical and Aerospace Engineering Singapore Institute of Manufacturing Technology (SIMTech) Singapore Centre for 3D Printing Engineering 3D printing Machine learning In recent years, there has been widespread adoption of machine learning (ML) technologies to unravel intricate relationships among diverse parameters in various additive manufacturing (AM) techniques. These ML models excel at recognizing complex patterns from extensive, well-curated datasets, thereby unveiling latent knowledge crucial for informed decision-making during the AM process. The collaborative synergy between ML and AM holds the potential to revolutionize the design and production of AM-printed parts. This review delves into the challenges and opportunities emerging at the intersection of these two dynamic fields. It provides a comprehensive analysis of the publication landscape for ML-related research in the field of AM, explores common ML applications in AM research (such as quality control, process optimization, design optimization, microstructure analysis, and material formulation), and concludes by presenting an outlook that underscores the utilization of advanced ML models, the development of emerging sensors, and ML applications in emerging AM-related fields. Notably, ML has garnered increased attention in AM due to its superior performance across various AM-related applications. It is envisioned that the integration of ML into AM processes will significantly enhance 3D printing capabilities across diverse AM-related research areas. Agency for Science, Technology and Research (A*STAR) Nanyang Technological University National Research Foundation (NRF) Published version W.L.Ng would like to acknowledge support from the NTU Presidential Postdoctoral Fellowship. W.Y.Yeong would like to acknowledge the support of the National Research Foundation for NRF Investigatorship Award No.: NRF-NRFI07-2021-0007. Part of this research was supported by A*STAR under its RIE2015 JCO Career Development Award (Grant No 202D800024). 2024-05-08T01:09:59Z 2024-05-08T01:09:59Z 2024 Journal Article Ng, W. L., Goh, G. L., Goh, G. D., Ten, J. J. S. & Yeong, W. Y. (2024). Progress and opportunities for machine learning in materials and processes of additive manufacturing. Advanced Materials, 2310006-. https://dx.doi.org/10.1002/adma.202310006 0935-9648 https://hdl.handle.net/10356/175825 10.1002/adma.202310006 2310006 en NRF-NRFI07-2021-0007 RIE2015-JCO-202D800024 Advanced Materials © 2024 The Authors. Advanced Materials published by Wiley-VCH GmbH. This is an open access article under the terms of the Creative Commons Attribution License, which permits use, distribution and reproduction in any medium, provided the original work is properly cited. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering
3D printing
Machine learning
spellingShingle Engineering
3D printing
Machine learning
Ng, Wei Long
Goh, Guo Liang
Goh, Guo Dong
Ten, Jason Jyi Sheuan
Yeong, Wai Yee
Progress and opportunities for machine learning in materials and processes of additive manufacturing
description In recent years, there has been widespread adoption of machine learning (ML) technologies to unravel intricate relationships among diverse parameters in various additive manufacturing (AM) techniques. These ML models excel at recognizing complex patterns from extensive, well-curated datasets, thereby unveiling latent knowledge crucial for informed decision-making during the AM process. The collaborative synergy between ML and AM holds the potential to revolutionize the design and production of AM-printed parts. This review delves into the challenges and opportunities emerging at the intersection of these two dynamic fields. It provides a comprehensive analysis of the publication landscape for ML-related research in the field of AM, explores common ML applications in AM research (such as quality control, process optimization, design optimization, microstructure analysis, and material formulation), and concludes by presenting an outlook that underscores the utilization of advanced ML models, the development of emerging sensors, and ML applications in emerging AM-related fields. Notably, ML has garnered increased attention in AM due to its superior performance across various AM-related applications. It is envisioned that the integration of ML into AM processes will significantly enhance 3D printing capabilities across diverse AM-related research areas.
author2 School of Mechanical and Aerospace Engineering
author_facet School of Mechanical and Aerospace Engineering
Ng, Wei Long
Goh, Guo Liang
Goh, Guo Dong
Ten, Jason Jyi Sheuan
Yeong, Wai Yee
format Article
author Ng, Wei Long
Goh, Guo Liang
Goh, Guo Dong
Ten, Jason Jyi Sheuan
Yeong, Wai Yee
author_sort Ng, Wei Long
title Progress and opportunities for machine learning in materials and processes of additive manufacturing
title_short Progress and opportunities for machine learning in materials and processes of additive manufacturing
title_full Progress and opportunities for machine learning in materials and processes of additive manufacturing
title_fullStr Progress and opportunities for machine learning in materials and processes of additive manufacturing
title_full_unstemmed Progress and opportunities for machine learning in materials and processes of additive manufacturing
title_sort progress and opportunities for machine learning in materials and processes of additive manufacturing
publishDate 2024
url https://hdl.handle.net/10356/175825
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