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Enhancing deep-learning training for phase identification in powder X-ray diffractograms

Within the domain of analyzing powder X-ray diffraction (XRD) scans, manual examination of the recorded data is still the most popular method, but it requires some expertise and is time consuming. The usual workflow for the phase-identification task involves software for searching databases of known...

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Autores principales: Schuetzke, Jan, Benedix, Alexander, Mikut, Ralf, Reischl, Markus
Formato: Online Artículo Texto
Lenguaje:English
Publicado: International Union of Crystallography 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8086162/
https://www.ncbi.nlm.nih.gov/pubmed/33953927
http://dx.doi.org/10.1107/S2052252521002402
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author Schuetzke, Jan
Benedix, Alexander
Mikut, Ralf
Reischl, Markus
author_facet Schuetzke, Jan
Benedix, Alexander
Mikut, Ralf
Reischl, Markus
author_sort Schuetzke, Jan
collection PubMed
description Within the domain of analyzing powder X-ray diffraction (XRD) scans, manual examination of the recorded data is still the most popular method, but it requires some expertise and is time consuming. The usual workflow for the phase-identification task involves software for searching databases of known compounds and matching lists of d spacings and related intensities to the measured data. Most automated approaches apply some iterative procedure for the search/match process but fail to be generally reliable yet without the manual validation step of an expert. Recent advances in the field of machine and deep learning have led to the development of algorithms for use with diffraction patterns and are producing promising results in some applications. A limitation, however, is that thousands of training samples are required for the model to achieve a reliable performance and not enough measured samples are available. Accordingly, a framework for the efficient generation of thousands of synthetic XRD scans is presented which considers typical effects in realistic measurements and thus simulates realistic patterns for the training of machine- or deep-learning models. The generated data set can be applied to any machine- or deep-learning structure as training data so that the models learn to analyze measured XRD data based on synthetic diffraction patterns. Consequently, we train a convolutional neural network with the simulated diffraction patterns for application with iron ores or cements compounds and prove robustness against varying unit-cell parameters, preferred orientation and crystallite size in synthetic, as well as measured, XRD scans.
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spelling pubmed-80861622021-05-04 Enhancing deep-learning training for phase identification in powder X-ray diffractograms Schuetzke, Jan Benedix, Alexander Mikut, Ralf Reischl, Markus IUCrJ Research Papers Within the domain of analyzing powder X-ray diffraction (XRD) scans, manual examination of the recorded data is still the most popular method, but it requires some expertise and is time consuming. The usual workflow for the phase-identification task involves software for searching databases of known compounds and matching lists of d spacings and related intensities to the measured data. Most automated approaches apply some iterative procedure for the search/match process but fail to be generally reliable yet without the manual validation step of an expert. Recent advances in the field of machine and deep learning have led to the development of algorithms for use with diffraction patterns and are producing promising results in some applications. A limitation, however, is that thousands of training samples are required for the model to achieve a reliable performance and not enough measured samples are available. Accordingly, a framework for the efficient generation of thousands of synthetic XRD scans is presented which considers typical effects in realistic measurements and thus simulates realistic patterns for the training of machine- or deep-learning models. The generated data set can be applied to any machine- or deep-learning structure as training data so that the models learn to analyze measured XRD data based on synthetic diffraction patterns. Consequently, we train a convolutional neural network with the simulated diffraction patterns for application with iron ores or cements compounds and prove robustness against varying unit-cell parameters, preferred orientation and crystallite size in synthetic, as well as measured, XRD scans. International Union of Crystallography 2021-04-01 /pmc/articles/PMC8086162/ /pubmed/33953927 http://dx.doi.org/10.1107/S2052252521002402 Text en © Schuetzke et al. 2021 https://creativecommons.org/licenses/by/4.0/This is an open-access article distributed under the terms of the Creative Commons Attribution (CC-BY) Licence, which permits unrestricted use, distribution, and reproduction in any medium, provided the original authors and source are cited.
spellingShingle Research Papers
Schuetzke, Jan
Benedix, Alexander
Mikut, Ralf
Reischl, Markus
Enhancing deep-learning training for phase identification in powder X-ray diffractograms
title Enhancing deep-learning training for phase identification in powder X-ray diffractograms
title_full Enhancing deep-learning training for phase identification in powder X-ray diffractograms
title_fullStr Enhancing deep-learning training for phase identification in powder X-ray diffractograms
title_full_unstemmed Enhancing deep-learning training for phase identification in powder X-ray diffractograms
title_short Enhancing deep-learning training for phase identification in powder X-ray diffractograms
title_sort enhancing deep-learning training for phase identification in powder x-ray diffractograms
topic Research Papers
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8086162/
https://www.ncbi.nlm.nih.gov/pubmed/33953927
http://dx.doi.org/10.1107/S2052252521002402
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