TY - JOUR
T1 - Deep neural network prediction for effective thermal conductivity and spreading thermal resistance for flat heat pipe
AU - Kim, Myeongjin
AU - Moon, Joo Hyun
N1 - Publisher Copyright:
© 2022, Myeongjin Kim and Joo Hyun Moon.
PY - 2023/1/5
Y1 - 2023/1/5
N2 - Purpose: This study aims to introduce a deep neural network (DNN) to estimate the effective thermal conductivity of the flat heat pipe with spreading thermal resistance. Design/methodology/approach: A total of 2,160 computational fluid dynamics simulation cases over up to 2,000 W/mK are conducted to regress big data and predict a wider range of effective thermal conductivity up to 10,000 W/mK. The deep neural networking is trained with reinforcement learning from 10–12 steps minimizing errors in each step. Another 8,640 CFD cases are used to validate. Findings: Experimental, simulational and theoretical approaches are used to validate the DNN estimation for the same independent variables. The results from the two approaches show a good agreement with each other. In addition, the DNN method required less time when compared to the CFD. Originality/value: The DNN method opens a new way to secure data while predicting in a wide range without experiments or simulations. If these technologies can be applied to thermal and materials engineering, they will be the key to solve thermal obstacles that many longing to overcome.
AB - Purpose: This study aims to introduce a deep neural network (DNN) to estimate the effective thermal conductivity of the flat heat pipe with spreading thermal resistance. Design/methodology/approach: A total of 2,160 computational fluid dynamics simulation cases over up to 2,000 W/mK are conducted to regress big data and predict a wider range of effective thermal conductivity up to 10,000 W/mK. The deep neural networking is trained with reinforcement learning from 10–12 steps minimizing errors in each step. Another 8,640 CFD cases are used to validate. Findings: Experimental, simulational and theoretical approaches are used to validate the DNN estimation for the same independent variables. The results from the two approaches show a good agreement with each other. In addition, the DNN method required less time when compared to the CFD. Originality/value: The DNN method opens a new way to secure data while predicting in a wide range without experiments or simulations. If these technologies can be applied to thermal and materials engineering, they will be the key to solve thermal obstacles that many longing to overcome.
KW - Computational fluid dynamics
KW - Effective thermal conductivity
KW - Flat heat pipe
KW - Neural network
KW - Thermal system design
UR - http://www.scopus.com/inward/record.url?scp=85128432509&partnerID=8YFLogxK
U2 - 10.1108/HFF-10-2021-0685
DO - 10.1108/HFF-10-2021-0685
M3 - Article
AN - SCOPUS:85128432509
SN - 0961-5539
VL - 33
SP - 437
EP - 455
JO - International Journal of Numerical Methods for Heat and Fluid Flow
JF - International Journal of Numerical Methods for Heat and Fluid Flow
IS - 2
ER -