Learning from Imperfections: Predicting Structure and Thermodynamics from Atomic Imaging of Fluctuations
Author(s) -
Lukáš Vlček,
Maxim Ziatdinov,
Artem Maksov,
Alexander Tselev,
Arthur P. Baddorf,
Sergei V. Kalinin,
Rama K. Vasudevan
Publication year - 2019
Publication title -
acs nano
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.554
H-Index - 382
eISSN - 1936-086X
pISSN - 1936-0851
DOI - 10.1021/acsnano.8b07980
Subject(s) - statistical physics , characterization (materials science) , inference , interatomic potential , atomic units , phase diagram , space (punctuation) , materials science , inverse , material properties , computer science , phase (matter) , physics , thermodynamics , nanotechnology , artificial intelligence , mathematics , molecular dynamics , quantum mechanics , geometry , operating system
In materials characterization, traditionally a single experimental sample is used to derive information about a single point in the composition space, while the imperfections, impurities, and stochastic details of material structure are deemed irrelevant or complicating factors in the analysis. Here we demonstrate that atomic-scale studies of a single nominal composition can provide information about microstructures and thermodynamic response over a finite area of chemical space. Using the principles of statistical inference, we develop a framework for incorporating structural fluctuations into statistical mechanical models and use it to solve the inverse problem of deriving effective interatomic interactions responsible for elemental segregation in a La 5/8 Ca 3/8 MnO 3 hin film. The results are further analyzed by a variational autoencoder to detect anomalous behavior in the composition phase diagram. This study provides a framework for creating generative models from a combination of multiple experimental data and provides direct insight into the driving forces for cation segregation in manganites.
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