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Machine learning of optical properties of materials – predicting spectra from images and images from spectra

As the materials science community seeks to capitalize on recent advancements in computer science, the sparsity of well-labelled experimental data and limited throughput by which it can be generated have inhibited deployment of machine learning algorithms to date. Several successful examples in comp...

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Autores principales: Stein, Helge S., Guevarra, Dan, Newhouse, Paul F., Soedarmadji, Edwin, Gregoire, John M.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Royal Society of Chemistry 2018
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6334722/
https://www.ncbi.nlm.nih.gov/pubmed/30746072
http://dx.doi.org/10.1039/c8sc03077d
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author Stein, Helge S.
Guevarra, Dan
Newhouse, Paul F.
Soedarmadji, Edwin
Gregoire, John M.
author_facet Stein, Helge S.
Guevarra, Dan
Newhouse, Paul F.
Soedarmadji, Edwin
Gregoire, John M.
author_sort Stein, Helge S.
collection PubMed
description As the materials science community seeks to capitalize on recent advancements in computer science, the sparsity of well-labelled experimental data and limited throughput by which it can be generated have inhibited deployment of machine learning algorithms to date. Several successful examples in computational chemistry have inspired further adoption of machine learning algorithms, and in the present work we present autoencoding algorithms for measured optical properties of metal oxides, which can serve as an exemplar for the breadth and depth of data required for modern algorithms to learn the underlying structure of experimental materials science data. Our set of 178 994 distinct materials samples spans 78 distinct composition spaces, includes 45 elements, and contains more than 80 000 unique quinary oxide and 67 000 unique quaternary oxide compositions, making it the largest and most diverse experimental materials set utilized in machine learning studies. The extensive dataset enabled training and validation of 3 distinct models for mapping between sample images and absorption spectra, including a conditional variational autoencoder that generates images of hypothetical materials with tailored absorption properties. The absorption patterns auto-generated from sample images capture the salient features of ground truth spectra, and band gap energies extracted from these auto-generated patterns are quite accurate with a mean absolute error of 180 meV, which is the approximate uncertainty from traditional extraction of the band gap energy from measurements of the full transmission and reflection spectra. Optical properties of materials are not only ubiquitous in materials applications but also emblematic of the confluence of underlying physical phenomena yielding the type of complex data relationships that merit and benefit from neural network-type modelling.
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spelling pubmed-63347222019-02-11 Machine learning of optical properties of materials – predicting spectra from images and images from spectra Stein, Helge S. Guevarra, Dan Newhouse, Paul F. Soedarmadji, Edwin Gregoire, John M. Chem Sci Chemistry As the materials science community seeks to capitalize on recent advancements in computer science, the sparsity of well-labelled experimental data and limited throughput by which it can be generated have inhibited deployment of machine learning algorithms to date. Several successful examples in computational chemistry have inspired further adoption of machine learning algorithms, and in the present work we present autoencoding algorithms for measured optical properties of metal oxides, which can serve as an exemplar for the breadth and depth of data required for modern algorithms to learn the underlying structure of experimental materials science data. Our set of 178 994 distinct materials samples spans 78 distinct composition spaces, includes 45 elements, and contains more than 80 000 unique quinary oxide and 67 000 unique quaternary oxide compositions, making it the largest and most diverse experimental materials set utilized in machine learning studies. The extensive dataset enabled training and validation of 3 distinct models for mapping between sample images and absorption spectra, including a conditional variational autoencoder that generates images of hypothetical materials with tailored absorption properties. The absorption patterns auto-generated from sample images capture the salient features of ground truth spectra, and band gap energies extracted from these auto-generated patterns are quite accurate with a mean absolute error of 180 meV, which is the approximate uncertainty from traditional extraction of the band gap energy from measurements of the full transmission and reflection spectra. Optical properties of materials are not only ubiquitous in materials applications but also emblematic of the confluence of underlying physical phenomena yielding the type of complex data relationships that merit and benefit from neural network-type modelling. Royal Society of Chemistry 2018-10-25 /pmc/articles/PMC6334722/ /pubmed/30746072 http://dx.doi.org/10.1039/c8sc03077d Text en This journal is © The Royal Society of Chemistry 2019 http://creativecommons.org/licenses/by-nc/3.0/ This article is freely available. This article is licensed under a Creative Commons Attribution Non Commercial 3.0 Unported Licence (CC BY-NC 3.0)
spellingShingle Chemistry
Stein, Helge S.
Guevarra, Dan
Newhouse, Paul F.
Soedarmadji, Edwin
Gregoire, John M.
Machine learning of optical properties of materials – predicting spectra from images and images from spectra
title Machine learning of optical properties of materials – predicting spectra from images and images from spectra
title_full Machine learning of optical properties of materials – predicting spectra from images and images from spectra
title_fullStr Machine learning of optical properties of materials – predicting spectra from images and images from spectra
title_full_unstemmed Machine learning of optical properties of materials – predicting spectra from images and images from spectra
title_short Machine learning of optical properties of materials – predicting spectra from images and images from spectra
title_sort machine learning of optical properties of materials – predicting spectra from images and images from spectra
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6334722/
https://www.ncbi.nlm.nih.gov/pubmed/30746072
http://dx.doi.org/10.1039/c8sc03077d
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