Litcius/Paper detail

Equivariant graph neural network interatomic potential for Green-Kubo thermal conductivity in phase change materials

Sung-Ho Lee, Jing Li, Valério Olevano, B. Sklénard

2024Physical Review Materials10 citationsDOIOpen Access PDF

Abstract

Thermal conductivity is a fundamental material property that plays an essential role in technology, but its accurate evaluation presents a challenge for theory. In this work, we demonstrate the application of $E(3)$-equivariant neutral network interatomic potentials within Green-Kubo formalism to determine the lattice thermal conductivity in amorphous and crystalline materials. We apply this method to study the thermal conductivity of germanium telluride (GeTe) as a prototypical phase change material. A single deep learning interatomic potential is able to describe the phase transitions between the amorphous, rhombohedral, and cubic phases, with critical temperatures in good agreement with experiments. Furthermore, this approach accurately captures the pronounced anharmonicity that is present in GeTe, enabling precise calculations of the thermal conductivity. In contrast, the Boltzmann transport equation including only three-phonon processes tends to overestimate the thermal conductivity by approximately a factor of 2 in the crystalline phases.

Topics & Concepts

Thermal conductivityMaterials sciencePhononAnharmonicityCondensed matter physicsPhase transitionInteratomic potentialAmorphous solidMolecular dynamicsPhysicsQuantum mechanicsComposite materialCrystallographyChemistryMachine Learning in Materials ScienceAdvanced Thermoelectric Materials and DevicesThermal properties of materials