This paper presents the development of a scale-invariant machine-learning (ML) model to discover novel quaternary chalcogenides (AMM′Q3) with ultralow lattice thermal conductivity (κ). The model, based on a crystal graph convolutional neural network, is insensitive to the input crystal structures' volumes. Screening approximately 1 million compounds for thermodynamic stability using iterative ML and DFT calculations identified 99 DFT-validated stable compounds. Calculations using the Peierls–Boltzmann transport equation revealed ultralow κ (<2 Wm⁻¹K⁻¹ at room temperature) in these compounds, attributed to soft elasticity and strong phonon anharmonicity. The study highlights the efficiency of the scale-invariant ML model in predicting novel compounds.
Publisher
npj Computational Materials
Published On
Mar 24, 2022
Authors
Koushik Pal, Cheol Woo Park, Yi Xia, Jiahong Shen, Chris Wolverton
Tags
machine learning
quaternary chalcogenides
thermal conductivity
lattice thermal conductivity
phonon anharmonicity
crystal graph convolutional network
thermodynamic stability
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