TY - JOUR
T1 - Prediction of nanoscale thermal transport and adsorption of liquid containing surfactant at solid–liquid interface via deep learning
AU - Guo, Yuting
AU - Li, Gaoyang
AU - Mabuchi, Takuya
AU - Surblys, Donatas
AU - Ohara, Taku
AU - Tokumasu, Takashi
N1 - Funding Information:
This work was supported by JST CREST Grant Number JPMJCR17I2, Japan. Numerical simulations were performed on the Supercomputer system “AFI-NITY” at the Advanced Fluid Information Research Center, Institute of Fluid Science, Tohoku University.
Funding Information:
This work was supported by JST CREST Grant Number JPMJCR17I2 , Japan. Numerical simulations were performed on the Supercomputer system “AFI-NITY” at the Advanced Fluid Information Research Center, Institute of Fluid Science, Tohoku University.
Publisher Copyright:
© 2022 Elsevier Inc.
PY - 2022/5
Y1 - 2022/5
N2 - Hypothesis: Recent advances in deep learning (DL) have enabled high level of real-time prediction of thermophysical properties of materials. On the other hand, molecular dynamics (MD) have been long used as a numerical microscope to observe detailed interfacial conditions but require separate simulations that are computationally costly. Hence, it should be possible to combine MD and DL to obtain high resolution interfacial details at a low computational cost. Experiment: We proposed a novel DL encoding–decoding convolutional neural network (CNN) coupled with MD to realize the mapping from micro solid–liquid interface geometry to molecular temperature and density distribution of liquid containing surfactant. A multi-nanoscale optimization scheme was further proposed to reduce the uncertainty of DL prediction at the expense of local details to obtain more resilient predictors. Findings: The statistical results showed that the proposed CNN had high prediction accuracy and could reproduce the heat transfer and adsorption phenomena under the influence of various factors including liquid composition, wettability, and solid surface roughness, while the computational efficiency was greatly improved. Our DL method with the support of multi-nanoscale learning strategies can achieve the fast and accurate visualization and prediction of various interfacial properties of liquid and assist for interfacial material design.
AB - Hypothesis: Recent advances in deep learning (DL) have enabled high level of real-time prediction of thermophysical properties of materials. On the other hand, molecular dynamics (MD) have been long used as a numerical microscope to observe detailed interfacial conditions but require separate simulations that are computationally costly. Hence, it should be possible to combine MD and DL to obtain high resolution interfacial details at a low computational cost. Experiment: We proposed a novel DL encoding–decoding convolutional neural network (CNN) coupled with MD to realize the mapping from micro solid–liquid interface geometry to molecular temperature and density distribution of liquid containing surfactant. A multi-nanoscale optimization scheme was further proposed to reduce the uncertainty of DL prediction at the expense of local details to obtain more resilient predictors. Findings: The statistical results showed that the proposed CNN had high prediction accuracy and could reproduce the heat transfer and adsorption phenomena under the influence of various factors including liquid composition, wettability, and solid surface roughness, while the computational efficiency was greatly improved. Our DL method with the support of multi-nanoscale learning strategies can achieve the fast and accurate visualization and prediction of various interfacial properties of liquid and assist for interfacial material design.
KW - Deep learning
KW - Encoding-decoding convolutional neural network
KW - Interfacial thermal transport
KW - Molecular dynamics
KW - Multi-nanoscale scheme
KW - Surfactant adsorption
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U2 - 10.1016/j.jcis.2022.01.037
DO - 10.1016/j.jcis.2022.01.037
M3 - Article
C2 - 35063787
AN - SCOPUS:85122910630
SN - 0021-9797
VL - 613
SP - 587
EP - 596
JO - Journal of Colloid and Interface Science
JF - Journal of Colloid and Interface Science
ER -