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물리 기반 인공 신경망의 적층 및 용접 연구 적용Review of Recent Additive Manufacturing and Welding Research with Application of Physics-Informed Neural Networks

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Review of Recent Additive Manufacturing and Welding Research with Application of Physics-Informed Neural Networks
Authors
고태환김희수신영철김덕용이영훈홍진수이승환
Issue Date
Aug-2024
Publisher
대한용접접합학회
Keywords
Physics-informed neural network; Additive manufacturing; Welding; Temperature field prediction; Melt pool behavior prediction; Mechanical property prediction
Citation
대한용접접합학회지, v.42, no.4, pp 357 - 365
Pages
9
Indexed
KCI
Journal Title
대한용접접합학회지
Volume
42
Number
4
Start Page
357
End Page
365
URI
https://scholarworks.bwise.kr/hanyang/handle/2021.sw.hanyang/195203
DOI
10.5781/JWJ.2024.42.4.3
ISSN
2466-2232
2466-2100
Abstract
This review introduces recent research on applying physics-informed neural networks (PINNs) to additive manufacturing and welding. PINNs, which are artificial intelligence models, integrate governing equations containing physical information with artificial neural networks, enabling the modeling of complex physical phenomena at a lower computational cost than traditional numerical models. Although PINNs have been employed in a limited number of studies on welding processes, they have been extensively used in various studies within the field of additive manufacturing. This study reviews the theoretical background of PINNs to explore their effective application to welding processes, examining 12 research cases in additive manufacturing and two research cases in welding processes. The analysis included the structure of the PINN, governing equations, and prediction results of each study. Results indicate that PINNs provide faster computation speeds and higher prediction accuracies than numerical models. Moreover, they could perform analyses without additional training even when process parameters and materials changed. Additionally, PINNs have been effectively applied to predict the mechanical properties of the molten zone. Consequently, PINNs are anticipated to be actively applied in future research on welding process modeling and mechanical property prediction.
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