Flame spray pyrolysis optimization via statistics and machine learning
Flame spray pyrolysis (FSP) is an important manufacturing process whereby nanomaterials are produced through the combustion of atomized fuel containing dissolved precursor elements. While FSP has the potential to enable the scalable production of a wide range of next generation energy materials, it...
Main Authors: | , , |
---|---|
Format: | Article |
Language: | English |
Published: |
Elsevier
2020-11-01
|
Series: | Materials & Design |
Subjects: | |
Online Access: | http://www.sciencedirect.com/science/article/pii/S0264127520305062 |
id |
doaj-c636038333be499e9f655b368b722535 |
---|---|
record_format |
Article |
spelling |
doaj-c636038333be499e9f655b368b7225352020-11-25T03:59:19ZengElsevierMaterials & Design0264-12752020-11-01196108972Flame spray pyrolysis optimization via statistics and machine learningNoah H. Paulson0Joseph A. Libera1Marius Stan2Corresponding author at: Argonne National Laboratory, 9700 Cass Avenue, Lemont, IL 60439, United States of America.; Applied Materials Division, Argonne National Laboratory, Argonne, IL 60439, United States of AmericaApplied Materials Division, Argonne National Laboratory, Argonne, IL 60439, United States of AmericaApplied Materials Division, Argonne National Laboratory, Argonne, IL 60439, United States of AmericaFlame spray pyrolysis (FSP) is an important manufacturing process whereby nanomaterials are produced through the combustion of atomized fuel containing dissolved precursor elements. While FSP has the potential to enable the scalable production of a wide range of next generation energy materials, it also has a multi-scale, multi-physics character, and a large number of processing variables. Optimizing the process for desirable material outcomes by traditional approaches is challenging. In this work, the processing parameter space is explored via a new and efficient methodology that includes statistical methods such as Latin hypercube design of experiments, machine learning surrogate modeling, and Bayesian optimization. As a result, the FSP process is optimized for enhanced performance. Specifically, in-situ particle size measurements are used to tailor the production of silica nanoparticles for a low spread in particle diameters with respect to the mean particle diameter, resulting in an improvement of 25.5% over the baseline within 15 experimental trials. In the process, the analysis reveals distinct domains of primary particle and agglomerated particle formation.http://www.sciencedirect.com/science/article/pii/S0264127520305062Flame spray pyrolysisNanoparticle synthesisLatin hypercube samplingBayesian optimization |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Noah H. Paulson Joseph A. Libera Marius Stan |
spellingShingle |
Noah H. Paulson Joseph A. Libera Marius Stan Flame spray pyrolysis optimization via statistics and machine learning Materials & Design Flame spray pyrolysis Nanoparticle synthesis Latin hypercube sampling Bayesian optimization |
author_facet |
Noah H. Paulson Joseph A. Libera Marius Stan |
author_sort |
Noah H. Paulson |
title |
Flame spray pyrolysis optimization via statistics and machine learning |
title_short |
Flame spray pyrolysis optimization via statistics and machine learning |
title_full |
Flame spray pyrolysis optimization via statistics and machine learning |
title_fullStr |
Flame spray pyrolysis optimization via statistics and machine learning |
title_full_unstemmed |
Flame spray pyrolysis optimization via statistics and machine learning |
title_sort |
flame spray pyrolysis optimization via statistics and machine learning |
publisher |
Elsevier |
series |
Materials & Design |
issn |
0264-1275 |
publishDate |
2020-11-01 |
description |
Flame spray pyrolysis (FSP) is an important manufacturing process whereby nanomaterials are produced through the combustion of atomized fuel containing dissolved precursor elements. While FSP has the potential to enable the scalable production of a wide range of next generation energy materials, it also has a multi-scale, multi-physics character, and a large number of processing variables. Optimizing the process for desirable material outcomes by traditional approaches is challenging. In this work, the processing parameter space is explored via a new and efficient methodology that includes statistical methods such as Latin hypercube design of experiments, machine learning surrogate modeling, and Bayesian optimization. As a result, the FSP process is optimized for enhanced performance. Specifically, in-situ particle size measurements are used to tailor the production of silica nanoparticles for a low spread in particle diameters with respect to the mean particle diameter, resulting in an improvement of 25.5% over the baseline within 15 experimental trials. In the process, the analysis reveals distinct domains of primary particle and agglomerated particle formation. |
topic |
Flame spray pyrolysis Nanoparticle synthesis Latin hypercube sampling Bayesian optimization |
url |
http://www.sciencedirect.com/science/article/pii/S0264127520305062 |
work_keys_str_mv |
AT noahhpaulson flamespraypyrolysisoptimizationviastatisticsandmachinelearning AT josephalibera flamespraypyrolysisoptimizationviastatisticsandmachinelearning AT mariusstan flamespraypyrolysisoptimizationviastatisticsandmachinelearning |
_version_ |
1724454643799425024 |