Literature DB >> 29906159

Neural Network Approach for Characterizing Structural Transformations by X-Ray Absorption Fine Structure Spectroscopy.

Janis Timoshenko1, Andris Anspoks2, Arturs Cintins2, Alexei Kuzmin2, Juris Purans2, Anatoly I Frenkel1,3.   

Abstract

The knowledge of the coordination environment around various atomic species in many functional materials provides a key for explaining their properties and working mechanisms. Many structural motifs and their transformations are difficult to detect and quantify in the process of work (operando conditions), due to their local nature, small changes, low dimensionality of the material, and/or extreme conditions. Here we use an artificial neural network approach to extract the information on the local structure and its in situ changes directly from the x-ray absorption fine structure spectra. We illustrate this capability by extracting the radial distribution function (RDF) of atoms in ferritic and austenitic phases of bulk iron across the temperature-induced transition. Integration of RDFs allows us to quantify the changes in the iron coordination and material density, and to observe the transition from a body-centered to a face-centered cubic arrangement of iron atoms. This method is attractive for a broad range of materials and experimental conditions.

Entities:  

Year:  2018        PMID: 29906159     DOI: 10.1103/PhysRevLett.120.225502

Source DB:  PubMed          Journal:  Phys Rev Lett        ISSN: 0031-9007            Impact factor:   9.161


  12 in total

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6.  Local electronic structure rearrangements and strong anharmonicity in YH3 under pressures up to 180 GPa.

Authors:  J Purans; A P Menushenkov; S P Besedin; A A Ivanov; V S Minkov; I Pudza; A Kuzmin; K V Klementiev; S Pascarelli; O Mathon; A D Rosa; T Irifune; M I Eremets
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7.  Neural Network Model for Predicting Student Failure in the Academic Leveling Course of Escuela Politécnica Nacional.

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9.  Linking the evolution of catalytic properties and structural changes in copper-zinc nanocatalysts using operando EXAFS and neural-networks.

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10.  Adsorption Sites on Pd Nanoparticles Unraveled by Machine-Learning Potential with Adaptive Sampling.

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Journal:  Molecules       Date:  2022-01-06       Impact factor: 4.411

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