| Literature DB >> 31486179 |
Volker L Deringer1,2, Miguel A Caro3, Gábor Csányi1.
Abstract
Atomic-scale modeling and understanding of materials have made remarkable progress, but they are still fundamentally limited by the large computational cost of explicit electronic-structure methods such as density-functional theory. This Progress Report shows how machine learning (ML) is currently enabling a new degree of realism in materials modeling: by "learning" electronic-structure data, ML-based interatomic potentials give access to atomistic simulations that reach similar accuracy levels but are orders of magnitude faster. A brief introduction to the new tools is given, and then, applications to some select problems in materials science are highlighted: phase-change materials for memory devices; nanoparticle catalysts; and carbon-based electrodes for chemical sensing, supercapacitors, and batteries. It is hoped that the present work will inspire the development and wider use of ML-based interatomic potentials in diverse areas of materials research.Entities:
Keywords: amorphous solids; atomistic modeling; big data; force fields; molecular dynamics
Year: 2019 PMID: 31486179 DOI: 10.1002/adma.201902765
Source DB: PubMed Journal: Adv Mater ISSN: 0935-9648 Impact factor: 30.849