Despite vibrational properties being critical for the ab initio prediction of finite-temperature stability as well as thermal conductivity and other transport properties of solids, their inclusion in ab initio materials repositories has been hindered by expensive computational requirements. Here we tackle the challenge, by showing that a good estimation of force constants and vibrational properties can be quickly achieved from the knowledge of atomic equilibrium positions using machine learning. A random-forest algorithm trained on 121 different mechanically stable structures of KZnF3 reaches a mean absolute error of 0.17 eV/Å2 for the interatomic force constants, and it is less expensive than training the complete force field for such comp...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
Despite vibrational properties being critical for the ab initio prediction of finite-temperature sta...
Despite vibrational properties being critical for the ab initio prediction of finite-temperature sta...
The thermodynamic properties of materials are of great interest for both scientists and engineers. A...
Phononic properties are commonly studied by calculating force constants using the density functional...
What is the likelihood that a hypothetical material - the combination of a composition and crystal s...
Abstract The identification of the ground state phases of a chemical space in the convex hull analys...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Data on 5244 crystalline compounds from the open AFLOWlib repository are used to build machine learn...
Phononic properties are commonly studied by calculating force constants using the density functional...
Abstract Crystal structure prediction is a central problem of crystallography and materials science,...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Understanding the thermal properties o...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
Despite vibrational properties being critical for the ab initio prediction of finite-temperature sta...
Despite vibrational properties being critical for the ab initio prediction of finite-temperature sta...
The thermodynamic properties of materials are of great interest for both scientists and engineers. A...
Phononic properties are commonly studied by calculating force constants using the density functional...
What is the likelihood that a hypothetical material - the combination of a composition and crystal s...
Abstract The identification of the ground state phases of a chemical space in the convex hull analys...
Machine Learning (ML) techniques are revolutionizing the way to perform efficient materials modeling...
Data on 5244 crystalline compounds from the open AFLOWlib repository are used to build machine learn...
Phononic properties are commonly studied by calculating force constants using the density functional...
Abstract Crystal structure prediction is a central problem of crystallography and materials science,...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
© 2018 Informa UK Limited, trading as Taylor & Francis Group. Understanding the thermal properties o...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...
International audienceThe temperature variation of the defect densities in a crystal depends on vibr...