Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)

The requirements for new materials are increasing with each new application, which, in most cases, means an enhancement in the complexity of the development process. Nanoporous sol-gel-based materials, especially aerogels, are promising candidates for thermal superinsulation, electrodes for energy c...

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Main Authors: Christian Scherdel, Eddi Miller, Gudrun Reichenauer, Jan Schmitt
Format: Article
Language:English
Published: MDPI AG 2021-04-01
Series:Processes
Subjects:
Online Access:https://www.mdpi.com/2227-9717/9/4/672
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spelling doaj-4ff014036b074209b19edf6d1ee7ff5d2021-04-11T23:01:00ZengMDPI AGProcesses2227-97172021-04-01967267210.3390/pr9040672Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)Christian Scherdel0Eddi Miller1Gudrun Reichenauer2Jan Schmitt3Bayerisches Zentrum für Angewandte Energieforschung (ZAE Bayern), Magdalene-Schoch-Str. 3, 97074 Würzburg, GermanyInstitute Digital Engineering (IDEE), University of Applied Sciences Würzburg-Schweinfurt, Ignaz-Schön-Straße 11, 97421 Schweinfurt, GermanyBayerisches Zentrum für Angewandte Energieforschung (ZAE Bayern), Magdalene-Schoch-Str. 3, 97074 Würzburg, GermanyInstitute Digital Engineering (IDEE), University of Applied Sciences Würzburg-Schweinfurt, Ignaz-Schön-Straße 11, 97421 Schweinfurt, GermanyThe requirements for new materials are increasing with each new application, which, in most cases, means an enhancement in the complexity of the development process. Nanoporous sol-gel-based materials, especially aerogels, are promising candidates for thermal superinsulation, electrodes for energy conversion and storage or high-end adsorbers. Their synthesis and processing route is complex, and the relationship between the material/processing parameters and the resulting structural and physical properties is not straightforward. Using small-angle X-ray scattering (SAXS) allows for fast structural characterization of both the gel and the resulting aerogel; combining these results with the respective physical properties of the aerogels and using these data as inputs for machine learning (ML) algorithms provide an approach to predict physical properties on the basis of a structural dataset. This data-driven strategy may be a feasible approach to speed up the development process. Thus, the study aimed to provide a proof of concept of ML-based model derivation from material, process and SAXS data to predict physical properties such as the solid-phase thermal conductivity (λ<sub>s</sub>) of silica aerogels from a structural dataset. Here, we used different data subsets as predictors according to different states of synthesis (wet and dry) to evaluate the model performance.https://www.mdpi.com/2227-9717/9/4/672sol-gel materialsSAXSmachine learningmaterial development
collection DOAJ
language English
format Article
sources DOAJ
author Christian Scherdel
Eddi Miller
Gudrun Reichenauer
Jan Schmitt
spellingShingle Christian Scherdel
Eddi Miller
Gudrun Reichenauer
Jan Schmitt
Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)
Processes
sol-gel materials
SAXS
machine learning
material development
author_facet Christian Scherdel
Eddi Miller
Gudrun Reichenauer
Jan Schmitt
author_sort Christian Scherdel
title Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)
title_short Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)
title_full Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)
title_fullStr Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)
title_full_unstemmed Advances in the Development of Sol-Gel Materials Combining Small-Angle X-Ray Scattering (SAXS) and Machine Learning (ML)
title_sort advances in the development of sol-gel materials combining small-angle x-ray scattering (saxs) and machine learning (ml)
publisher MDPI AG
series Processes
issn 2227-9717
publishDate 2021-04-01
description The requirements for new materials are increasing with each new application, which, in most cases, means an enhancement in the complexity of the development process. Nanoporous sol-gel-based materials, especially aerogels, are promising candidates for thermal superinsulation, electrodes for energy conversion and storage or high-end adsorbers. Their synthesis and processing route is complex, and the relationship between the material/processing parameters and the resulting structural and physical properties is not straightforward. Using small-angle X-ray scattering (SAXS) allows for fast structural characterization of both the gel and the resulting aerogel; combining these results with the respective physical properties of the aerogels and using these data as inputs for machine learning (ML) algorithms provide an approach to predict physical properties on the basis of a structural dataset. This data-driven strategy may be a feasible approach to speed up the development process. Thus, the study aimed to provide a proof of concept of ML-based model derivation from material, process and SAXS data to predict physical properties such as the solid-phase thermal conductivity (λ<sub>s</sub>) of silica aerogels from a structural dataset. Here, we used different data subsets as predictors according to different states of synthesis (wet and dry) to evaluate the model performance.
topic sol-gel materials
SAXS
machine learning
material development
url https://www.mdpi.com/2227-9717/9/4/672
work_keys_str_mv AT christianscherdel advancesinthedevelopmentofsolgelmaterialscombiningsmallanglexrayscatteringsaxsandmachinelearningml
AT eddimiller advancesinthedevelopmentofsolgelmaterialscombiningsmallanglexrayscatteringsaxsandmachinelearningml
AT gudrunreichenauer advancesinthedevelopmentofsolgelmaterialscombiningsmallanglexrayscatteringsaxsandmachinelearningml
AT janschmitt advancesinthedevelopmentofsolgelmaterialscombiningsmallanglexrayscatteringsaxsandmachinelearningml
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