A Unified Deep Neural Network Potential Capable of Predicting Thermal Conductivity of Silicon in Different Phases
Ruiyang Li, Eungkyu Lee, Tengfei Luo

TL;DR
This paper develops a deep neural network potential trained on ab-initio data to accurately predict the thermal conductivity of silicon across multiple phases, overcoming limitations of traditional force fields.
Contribution
The authors introduce a unified neural network potential capable of modeling silicon's different phases with high accuracy, enabling reliable thermal property predictions during phase transitions.
Findings
Accurately reproduces atomistic structures during phase changes.
Predicts thermal conductivities in good agreement with experiments.
Demonstrates transferability across crystalline, liquid, and amorphous silicon.
Abstract
Molecular dynamics simulations have been extensively used to predict thermal properties, but simulating different phases with similar precision using a unified force field is often difficult, due to the lack of accurate and transferrable interatomistic potential fields. As a result, this issue has become a major barrier to predicting the phase change of materials and their transport properties with atomistic-level modeling techniques. Recently, machine learning based algorithms have emerged as promising tools to develop accurate potentials for molecular dynamics simulations. In this work, we approach the problem of predicting the thermal conductivity of silicon in different phases by performing molecular dynamics simulations with a deep neural network potential. This neural network potential is trained with ab-initio data of silicon in the crystalline, liquid and amorphous phases. The…
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Taxonomy
TopicsThermal properties of materials · Machine Learning in Materials Science · Phase Equilibria and Thermodynamics
