Litcius/Paper detail

Heat flux for semilocal machine-learning potentials

Marcel F. Langer, Florian Knoop, Christian Carbogno, Matthias Scheffler, Matthias Rupp

2023Physical review. B./Physical review. B25 citationsDOIOpen Access PDF

Abstract

The Green-Kubo (GK) method is a rigorous framework for heat transport simulations in materials. However, it requires an accurate description of the potential-energy surface and carefully converged statistics. Machine-learning potentials can achieve the accuracy of first-principles simulations while allowing to reach well beyond their simulation time and length scales at a fraction of the cost. In this Letter, we explain how to apply the GK approach to the recent class of message-passing machine-learning potentials, which iteratively consider semilocal interactions beyond the initial interaction cutoff. We derive an adapted heat flux formulation that can be implemented using automatic differentiation without compromising computational efficiency. The approach is demonstrated and validated by calculating the thermal conductivity of zirconium dioxide across temperatures.

Topics & Concepts

Computer scienceThermal conductivityHeat fluxFlux (metallurgy)Class (philosophy)CutoffEnergy (signal processing)Fraction (chemistry)ThermalStatistical physicsMachine learningArtificial intelligencePhysicsAlgorithmHeat transferMechanicsThermodynamicsMaterials scienceQuantum mechanicsChemistryMetallurgyOrganic chemistryMachine Learning in Materials ScienceThermal properties of materialsNuclear Materials and Properties