Machine learning models of properties of hybrid 2D materials as potential super lubricants

ORAL

Abstract

The screening of novel materials is an important topic in the field of materials science. Although traditional computational modeling, especially first-principles approaches, is a very useful and accurate tool to predict the properties of novel materials, it still demands extensive and expensive state-of-the-art computational resources. Additionally, they can be often extremely time-consuming. We describe a time and resource-efficient machine learning approach to create a large dataset of structural properties of van der Waals layered structures. In particular, we focus on the interlayer energy and the elastic constant of layered materials composed of two different 2-dimensional (2D) structures, that are important for novel solid lubricant and super-lubricant materials. We show that machine learning models can recapitulate results of computationally expansive approaches (i.e. density functional theory) with high accuracy.

Presenters

  • Marco Fronzi

    IRCRE, Xi'an Jiaotong University

Authors

  • Marco Fronzi

    IRCRE, Xi'an Jiaotong University

  • Mutaz Abu Ghazaleh

    University of Technology Sydney

  • Olexandr Isayev

    University of North Carolina

  • David Winkler

    La Trobe University

  • joe shapter

    Flinders University

  • Michael J Ford

    University of Technology Sydney