Machine learning in additive manufacturing : state-of-the-art and perspectives
Additive manufacturing (AM) has emerged as a disruptive digital manufacturing technology. However, its broad adoption in industry is still hindered by high entry barriers of design for additive manufacturing (DfAM), limited materials library, various processing defects, and inconsistent product qual...
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sg-ntu-dr.10356-1434072021-01-28T05:05:38Z Machine learning in additive manufacturing : state-of-the-art and perspectives Wang, Chengcheng Tan, Xipeng Tor, Shu Beng Lim, C.S. School of Mechanical and Aerospace Engineering Singapore Centre for 3D Printing Engineering::Mechanical engineering::Prototyping Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Additive Manufacturing Process Additive manufacturing (AM) has emerged as a disruptive digital manufacturing technology. However, its broad adoption in industry is still hindered by high entry barriers of design for additive manufacturing (DfAM), limited materials library, various processing defects, and inconsistent product quality. In recent years, machine learning (ML) has gained increasing attention in AM due to its unprecedented performance in data tasks such as classification, regression and clustering. This article provides a comprehensive review on the state-of-the-art of ML applications in a variety of AM domains. In the DfAM, ML can be leveraged to output new high-performance metamaterials and optimized topological designs. In AM processing, contemporary ML algorithms can help to optimize process parameters, and conduct examination of powder spreading and in-process defect monitoring. On the production of AM, ML is able to assist practitioners in pre-manufacturing planning, and product quality assessment and control. Moreover, there has been an increasing concern about data security in AM as data breaches could occur with the aid of ML techniques. Lastly, it concludes with a section summarizing the main findings from the literature and providing perspectives on some selected interesting applications of ML in research and development of AM. National Research Foundation (NRF) Accepted version This research is supported by the National Research Foundation, Prime Minister’s Office, Singapore under its Medium-Sized Centre funding scheme. 2020-08-31T03:11:12Z 2020-08-31T03:11:12Z 2020 Journal Article Wang, C., Tan, X., Tor, S. B., & Lim, C.S. (2020). Machine learning in additive manufacturing : state-of-the-art and perspectives. Additive Manufacturing, 36, 101538-. doi:10.1016/j.addma.2020.101538 2214-8604 https://hdl.handle.net/10356/143407 10.1016/j.addma.2020.101538 36 101538 en Additive Manufacturing © 2020 Elsevier. All rights reserved. This paper was published in JAdditive Manufacturing and is made available with permission of Elsevier. application/pdf |
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Engineering::Mechanical engineering::Prototyping Engineering::Computer science and engineering::Computing methodologies::Image processing and computer vision Additive Manufacturing Process Wang, Chengcheng Tan, Xipeng Tor, Shu Beng Lim, C.S. Machine learning in additive manufacturing : state-of-the-art and perspectives |
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Additive manufacturing (AM) has emerged as a disruptive digital manufacturing technology. However, its broad adoption in industry is still hindered by high entry barriers of design for additive manufacturing (DfAM), limited materials library, various processing defects, and inconsistent product quality. In recent years, machine learning (ML) has gained increasing attention in AM due to its unprecedented performance in data tasks such as classification, regression and clustering. This article provides a comprehensive review on the state-of-the-art of ML applications in a variety of AM domains. In the DfAM, ML can be leveraged to output new high-performance metamaterials and optimized topological designs. In AM processing, contemporary ML algorithms can help to optimize process parameters, and conduct examination of powder spreading and in-process defect monitoring. On the production of AM, ML is able to assist practitioners in pre-manufacturing planning, and product quality assessment and control. Moreover, there has been an increasing concern about data security in AM as data breaches could occur with the aid of ML techniques. Lastly, it concludes with a section summarizing the main findings from the literature and providing perspectives on some selected interesting applications of ML in research and development of AM. |
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School of Mechanical and Aerospace Engineering |
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School of Mechanical and Aerospace Engineering Wang, Chengcheng Tan, Xipeng Tor, Shu Beng Lim, C.S. |
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Article |
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Wang, Chengcheng Tan, Xipeng Tor, Shu Beng Lim, C.S. |
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Wang, Chengcheng |
title |
Machine learning in additive manufacturing : state-of-the-art and perspectives |
title_short |
Machine learning in additive manufacturing : state-of-the-art and perspectives |
title_full |
Machine learning in additive manufacturing : state-of-the-art and perspectives |
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Machine learning in additive manufacturing : state-of-the-art and perspectives |
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Machine learning in additive manufacturing : state-of-the-art and perspectives |
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machine learning in additive manufacturing : state-of-the-art and perspectives |
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2020 |
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https://hdl.handle.net/10356/143407 |
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