Melting temperature prediction via first principles and deep learning
Qi-Jun Hong

TL;DR
This paper introduces two computational methods for predicting melting temperatures: one based on density functional theory molecular dynamics and the other on deep learning graph neural networks, offering a balance of accuracy and efficiency.
Contribution
The paper presents novel, publicly available DFT and deep learning methods for melting temperature prediction, significantly reducing computational costs and enabling rapid materials screening.
Findings
DFT method achieves high accuracy with reduced computational cost.
Deep learning model predicts melting points in milliseconds per material.
Both methods are complementary and useful for materials design.
Abstract
Melting is a high temperature process that requires extensive sampling of configuration space, thus making melting temperature prediction computationally very expensive and challenging. Over the past few years, I have built two methods to address this challenge, one via direct density functional theory (DFT) molecular dynamics (MD) simulations and the other via deep learning graph neural networks. The DFT approach is based on statistical analysis of small-size solid-liquid coexistence MD simulations. It eliminates the risk of metastable superheated solid in the fast-heating method, while also significantly reducing the computer cost relative to the traditional large-scale coexistence method. Being both accurate and efficient (at the speed of several days per material), it is considered as one of the best methods for direct DFT melting temperature calculation. The deep learning method is…
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Taxonomy
TopicsMachine Learning in Materials Science · Advanced Graph Neural Networks
