Abstract

It is well-known that the calculation of thermal conductivity using classical molecular dynamics (MD) simulations strongly depends on the choice of the appropriate interatomic potentials. As proven for the case of graphene, while most of the available interatomic potentials estimate the structural and elastic constants with high accuracy, when employed to predict the lattice thermal conductivity they however lead to a variation of predictions by one order of magnitude. Here we present our results on using machine-learning interatomic potentials (MLIPs) passively fitted to computationally inexpensive ab-initio molecular dynamics trajectories without any tuning or optimizing of hyperparameters. These first-attempt potentials could reproduce the phononic properties of different two-dimensional (2D) materials obtained using density functional theory (DFT) simulations. To illustrate the efficiency of the trained MLIPs, we consider polyaniline C3N nanosheets. C3N monolayer was selected because the classical MD and different first-principles results contradict each other, resulting in a scientific dilemma. It is shown that the predicted thermal conductivity of 418 ± 20 W mK−1 for C3N monolayer by the non-equilibrium MD simulations on the basis of a first-attempt MLIP evidences an improved accuracy when compared with the commonly employed MD models. Moreover, MLIP-based prediction can be considered as a solution to the debated reports in the literature. This study highlights that passively fitted MLIPs can be effectively employed as versatile and efficient tools to obtain accurate estimations of thermal conductivities of complex materials using classical MD simulations. In response to remarkable growth of 2D materials family, the devised modeling methodology could play a fundamental role to predict the thermal conductivity.

Highlights

  • Thermal conductivity is among the most important intrinsic properties of materials playing a key role in energy device engineering and thermal management [1–4]

  • The focus of the current work is on the development of machine-learning interatomic potentials (MLIPs) for the modeling of the thermal conductivity of 2D materials using the commonly used classical molecular dynamics (MD) modeling

  • We have shown that machine-learning interatomic potentials (MLIP) trained over short ab-initio molecular dynamics trajectories (AIMD) are able to reproduce the phonon dispersions and phonon group velocity of complex 2D materials in remarkable agreements with first-principles results

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Summary

Introduction

Thermal conductivity is among the most important intrinsic properties of materials playing a key role in energy device engineering and thermal management [1–4]. For the majority of advanced applications, as those in electronics and energy storage/conversion systems, components with higher thermal conductivities are highly desirable to enhance the heat dissipation rates and suppress the overheating issues. In this regard, materials with higher thermal conductivities can minimize the need for complicated and costly thermal management systems and may substantially improve efficiency. For thermally insulating and thermoelectric materials, a component with the minimal thermal conductivity is more suitable to reduce the energy losses or to improve the thermal to electric energy conversion efficiency, respectively. While for the bulk materials there exist various experimental ways for estimating the thermal conductivity, when the size of the materials decreases and approach the nanoscale, this can turn into a challenging and complicated task

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