December 1 - 6, 2024
Boston, Massachusetts
Symposium Supporters
2024 MRS Fall Meeting & Exhibit
NM01.06.03

Exploring the Configurational Space of Amorphous Graphene with Machine-Learned Atomic Energies

When and Where

Dec 4, 2024
9:15am - 9:30am
Hynes, Level 2, Room 200

Presenter(s)

Co-Author(s)

Zakariya El-Machachi1,Mark Wilson1,Volker Deringer1

University of Oxford1

Abstract

Zakariya El-Machachi1,Mark Wilson1,Volker Deringer1

University of Oxford1
Two-dimensionally extended amorphous carbon (“amorphous graphene”) is a prototype system for disorder in 2D, showing a rich and complex configurational space that is yet to be fully understood. In this contribution, we explore the nature of amorphous graphene with an atomistic machine-learning (ML) model. We create structural models by introducing defects into ordered graphene through Monte-Carlo bond switching, defining acceptance criteria using the machine-learned local, atomic energies associated with a defect, as well as the nearest-neighbor (NN) environments. We find that physically meaningful structural models arise from ML atomic energies in this way, ranging from continuous random networks to paracrystalline structures. Our results show that ML atomic energies can be used to guide Monte-Carlo structural searches in principle, and that their predictions of local stability can be linked to short- and medium-range order in amorphous graphene. We expect that the former point will be relevant more generally to the study of amorphous materials, and that the latter has wider implications for the interpretation of ML potential models.

Symposium Organizers

Sofie Cambré, University of Antwerp
Ranjit Pati, Michigan Technological University
Shunsuke Sakurai, National Institute of Advanced Industrial Science and Technology
Ming Zheng, National Institute of Standards and Technology

Session Chairs

Ranjit Pati
Shunsuke Sakurai

In this Session