Alli, YA, Anuar, H, Manshor, MR, Okafor, CE, Kamarulzaman, AF, Akçakale, N, Mohd Nazeri, FN, Bodaghi, M ORCID: https://orcid.org/0000-0002-0707-944X, Suhr, J and Mohd Nasir, NA, 2024. Optimization of 4D/3D printing via machine learning: a systematic review. Hybrid Advances, 6: 100242. ISSN 2773-207X
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Abstract
This systematic review explores the integration of 4D/3D printing technologies with machine learning, shaping a new era of manufacturing innovation. The analysis covers a wide range of research papers, articles, and patents, presenting a multidimensional perspective on the advancements in additive manufacturing. The review underscores machine learning's pivotal role in optimizing 4D/3D printing, addressing aspects like design customization, material selection, process control, and quality assurance. The examination reveals novel techniques enabling the fabrication of intelligent, self-adaptive structures capable of transformation over time. Additionally, the review investigates the use of predictive algorithms to enhance efficiency, reliability, and sustainability in 4D/3D printing processes. Applications span aerospace, healthcare, architecture, and consumer goods, showcasing the potential to create intricate, personalized, and once-unattainable functional products. The synergy between machine learning and 4D/3D printing is poised to unlock new manufacturing horizons, enabling rapid responses to market demands and sustainability challenges. In summary, this review provides a comprehensive overview of the current state of 4D/3D printing optimization through machine learning, highlighting the transformative potential of this interdisciplinary fusion and offering a roadmap for future research and development. It aims to inspire innovators, researchers, and industries to harness this powerful combination for accelerated evolution in manufacturing processes into the 21st century and beyond.
Item Type: | Journal article |
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Publication Title: | Hybrid Advances |
Creators: | Alli, Y.A., Anuar, H., Manshor, M.R., Okafor, C.E., Kamarulzaman, A.F., Akçakale, N., Mohd Nazeri, F.N., Bodaghi, M., Suhr, J. and Mohd Nasir, N.A. |
Publisher: | Elsevier |
Date: | August 2024 |
Volume: | 6 |
ISSN: | 2773-207X |
Identifiers: | Number Type 10.1016/j.hybadv.2024.100242 DOI S2773207X24001039 Publisher Item Identifier 1914536 Other |
Rights: | This is an open access article under the CC BY license (http://creativecommons.org/licenses/by/4.0/). |
Divisions: | Schools > School of Science and Technology |
Record created by: | Jonathan Gallacher |
Date Added: | 15 Jul 2024 13:10 |
Last Modified: | 15 Jul 2024 13:10 |
URI: | https://irep.ntu.ac.uk/id/eprint/51755 |
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