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Prediction of transport property via machine learning molecular movements (2203.03103v1)

Published 7 Mar 2022 in physics.chem-ph, cond-mat.soft, and cs.LG

Abstract: Molecular dynamics (MD) simulations are increasingly being combined with ML to predict material properties. The molecular configurations obtained from MD are represented by multiple features, such as thermodynamic properties, and are used as the ML input. However, to accurately find the input--output patterns, ML requires a sufficiently sized dataset that depends on the complexity of the ML model. Generating such a large dataset from MD simulations is not ideal because of their high computation cost. In this study, we present a simple supervised ML method to predict the transport properties of materials. To simplify the model, an unsupervised ML method obtains an efficient representation of molecular movements. This method was applied to predict the viscosity of lubricant molecules in confinement with shear flow. Furthermore, simplicity facilitates the interpretation of the model to understand the molecular mechanics of viscosity. We revealed two types of molecular mechanisms that contribute to low viscosity.

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Authors (8)
  1. Ikki Yasuda (5 papers)
  2. Yusei Kobayashi (6 papers)
  3. Katsuhiro Endo (14 papers)
  4. Yoshihiro Hayakawa (1 paper)
  5. Kazuhiko Fujiwara (2 papers)
  6. Kuniaki Yajima (1 paper)
  7. Noriyoshi Arai (10 papers)
  8. Kenji Yasuoka (18 papers)
Citations (1)

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