Affiliation:
1. Center for Integrated Materials Research Department of Chemistry and iNano Aarhus University Aarhus 8000 Denmark
2. Center for Interstellar Catalysis Department of Physics and Astronomy Aarhus University Ny Munkegade 120 Aarhus C 8000 Denmark
3. MAPEX Center for Materials and Processes Bremen Center for Computational Materials Science and Hybrid Materials Interfaces Group Bremen University 28359 Bremen Germany
Abstract
AbstractDetermination of crystal structures of nanocrystalline or amorphous compounds is a great challenge in solid‐state chemistry and physics. Pair distribution function (PDF) analysis of X‐ray or neutron total scattering data has proven to be a key element in tackling this challenge. However, in most cases, a reliable structural motif is needed as a starting configuration for structure refinements. Here, an algorithm that is able to determine the crystal structure of an unknown compound by means of an on‐the‐fly trained machine learning model, which combines density functional theory calculations with comparison of calculated and measured PDFs for global optimization in an artificial landscape, is presented. Due to the nature of this landscape, even metastable configurations and stacking disorders can be identified.
Funder
Danmarks Grundforskningsfond
RIKEN
Subject
Mechanical Engineering,Mechanics of Materials,General Materials Science
Cited by
12 articles.
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