Accelerated First-Principles Exploration of Structure and Reactivity in Graphene Oxide

Angew Chem Int Ed Engl. 2024 Dec 20;63(52):e202410088. doi: 10.1002/anie.202410088. Epub 2024 Nov 13.

Abstract

Graphene oxide (GO) materials are widely studied, and yet their atomic-scale structures remain to be fully understood. Here we show that the chemical and configurational space of GO can be rapidly explored by advanced machine-learning methods, combining on-the-fly acceleration for first-principles molecular dynamics with message-passing neural-network potentials. The first step allows for the rapid sampling of chemical structures with very little prior knowledge required; the second step affords state-of-the-art accuracy and predictive power. We apply the method to the thermal reduction of GO, which we describe in a realistic (ten-nanometre scale) structural model. Our simulations are consistent with recent experimental findings, including X-ray photoelectron spectroscopy (XPS), and help to rationalise them in atomistic and mechanistic detail. More generally, our work provides a platform for routine, accurate, and predictive simulations of diverse carbonaceous materials.

Keywords: carbon materials; computational chemistry; graphene; machine learning; neural-network potentials.