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Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks

[Image: see text] Extracting information from experimental measurements in the chemical sciences typically requires curve fitting, deconvolution, and/or solving the governing partial differential equations via numerical (e.g., finite element analysis) or analytical methods. However, using numerical...

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Autores principales: Rajapakse, Dinuka, Meckstroth, Josh, Jantz, Dylan T., Camarda, Kyle Vincent, Yao, Zijun, Leonard, Kevin C.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2022
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10120032/
https://www.ncbi.nlm.nih.gov/pubmed/37090257
http://dx.doi.org/10.1021/acsmeasuresciau.2c00056
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author Rajapakse, Dinuka
Meckstroth, Josh
Jantz, Dylan T.
Camarda, Kyle Vincent
Yao, Zijun
Leonard, Kevin C.
author_facet Rajapakse, Dinuka
Meckstroth, Josh
Jantz, Dylan T.
Camarda, Kyle Vincent
Yao, Zijun
Leonard, Kevin C.
author_sort Rajapakse, Dinuka
collection PubMed
description [Image: see text] Extracting information from experimental measurements in the chemical sciences typically requires curve fitting, deconvolution, and/or solving the governing partial differential equations via numerical (e.g., finite element analysis) or analytical methods. However, using numerical or analytical methods for high-throughput data analysis typically requires significant postprocessing efforts. Here, we show that deep learning artificial neural networks can be a very effective tool for extracting information from experimental data. As an example, reactivity and topography information from scanning electrochemical microscopy (SECM) approach curves are highly convoluted. This study utilized multilayer perceptrons and convolutional neural networks trained on simulated SECM data to extract kinetic rate constants of catalytic substrates. Our key findings were that multilayer perceptron models performed very well when the experimental data were close to the ideal conditions with which the model was trained. However, convolutional neural networks, which analyze images as opposed to direct data, were able to accurately predict the kinetic rate constant of Fe-doped nickel (oxy)hydroxide catalyst at different applied potentials even though the experimental approach curves were not ideal. Due to the speed at which machine learning models can analyze data, we believe this study shows that artificial neural networks could become powerful tools in high-throughput data analysis.
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spelling pubmed-101200322023-04-22 Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks Rajapakse, Dinuka Meckstroth, Josh Jantz, Dylan T. Camarda, Kyle Vincent Yao, Zijun Leonard, Kevin C. ACS Meas Sci Au [Image: see text] Extracting information from experimental measurements in the chemical sciences typically requires curve fitting, deconvolution, and/or solving the governing partial differential equations via numerical (e.g., finite element analysis) or analytical methods. However, using numerical or analytical methods for high-throughput data analysis typically requires significant postprocessing efforts. Here, we show that deep learning artificial neural networks can be a very effective tool for extracting information from experimental data. As an example, reactivity and topography information from scanning electrochemical microscopy (SECM) approach curves are highly convoluted. This study utilized multilayer perceptrons and convolutional neural networks trained on simulated SECM data to extract kinetic rate constants of catalytic substrates. Our key findings were that multilayer perceptron models performed very well when the experimental data were close to the ideal conditions with which the model was trained. However, convolutional neural networks, which analyze images as opposed to direct data, were able to accurately predict the kinetic rate constant of Fe-doped nickel (oxy)hydroxide catalyst at different applied potentials even though the experimental approach curves were not ideal. Due to the speed at which machine learning models can analyze data, we believe this study shows that artificial neural networks could become powerful tools in high-throughput data analysis. American Chemical Society 2022-11-15 /pmc/articles/PMC10120032/ /pubmed/37090257 http://dx.doi.org/10.1021/acsmeasuresciau.2c00056 Text en © 2022 The Authors. Published by American Chemical Society https://creativecommons.org/licenses/by-nc-nd/4.0/Permits non-commercial access and re-use, provided that author attribution and integrity are maintained; but does not permit creation of adaptations or other derivative works (https://creativecommons.org/licenses/by-nc-nd/4.0/).
spellingShingle Rajapakse, Dinuka
Meckstroth, Josh
Jantz, Dylan T.
Camarda, Kyle Vincent
Yao, Zijun
Leonard, Kevin C.
Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks
title Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks
title_full Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks
title_fullStr Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks
title_full_unstemmed Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks
title_short Deconvoluting Kinetic Rate Constants of Catalytic Substrates from Scanning Electrochemical Approach Curves with Artificial Neural Networks
title_sort deconvoluting kinetic rate constants of catalytic substrates from scanning electrochemical approach curves with artificial neural networks
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10120032/
https://www.ncbi.nlm.nih.gov/pubmed/37090257
http://dx.doi.org/10.1021/acsmeasuresciau.2c00056
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