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Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions

Predictive models of thermodynamic properties of mixtures are paramount in chemical engineering and chemistry. Classical thermodynamic models are successful in generalizing over (continuous) conditions like temperature and concentration. On the other hand, matrix completion methods (MCMs) from machi...

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Autores principales: Jirasek, Fabian, Bamler, Robert, Fellenz, Sophie, Bortz, Michael, Kloft, Marius, Mandt, Stephan, Hasse, Hans
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9067573/
https://www.ncbi.nlm.nih.gov/pubmed/35655876
http://dx.doi.org/10.1039/d1sc07210b
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author Jirasek, Fabian
Bamler, Robert
Fellenz, Sophie
Bortz, Michael
Kloft, Marius
Mandt, Stephan
Hasse, Hans
author_facet Jirasek, Fabian
Bamler, Robert
Fellenz, Sophie
Bortz, Michael
Kloft, Marius
Mandt, Stephan
Hasse, Hans
author_sort Jirasek, Fabian
collection PubMed
description Predictive models of thermodynamic properties of mixtures are paramount in chemical engineering and chemistry. Classical thermodynamic models are successful in generalizing over (continuous) conditions like temperature and concentration. On the other hand, matrix completion methods (MCMs) from machine learning successfully generalize over (discrete) binary systems; these MCMs can make predictions without any data for a given binary system by implicitly learning commonalities across systems. In the present work, we combine the strengths from both worlds in a hybrid approach. The underlying idea is to predict the pair-interaction energies, as they are used in basically all physical models of liquid mixtures, by an MCM. As an example, we embed an MCM into UNIQUAC, a widely-used physical model for the Gibbs excess energy. We train the resulting hybrid model in a Bayesian machine-learning framework on experimental data for activity coefficients in binary systems of 1146 components from the Dortmund Data Bank. We thereby obtain, for the first time, a complete set of UNIQUAC parameters for all binary systems of these components, which allows us to predict, in principle, activity coefficients at arbitrary temperature and composition for any combination of these components, not only for binary but also for multicomponent systems. The hybrid model even outperforms the best available physical model for predicting activity coefficients, the modified UNIFAC (Dortmund) model.
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spelling pubmed-90675732022-06-01 Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions Jirasek, Fabian Bamler, Robert Fellenz, Sophie Bortz, Michael Kloft, Marius Mandt, Stephan Hasse, Hans Chem Sci Chemistry Predictive models of thermodynamic properties of mixtures are paramount in chemical engineering and chemistry. Classical thermodynamic models are successful in generalizing over (continuous) conditions like temperature and concentration. On the other hand, matrix completion methods (MCMs) from machine learning successfully generalize over (discrete) binary systems; these MCMs can make predictions without any data for a given binary system by implicitly learning commonalities across systems. In the present work, we combine the strengths from both worlds in a hybrid approach. The underlying idea is to predict the pair-interaction energies, as they are used in basically all physical models of liquid mixtures, by an MCM. As an example, we embed an MCM into UNIQUAC, a widely-used physical model for the Gibbs excess energy. We train the resulting hybrid model in a Bayesian machine-learning framework on experimental data for activity coefficients in binary systems of 1146 components from the Dortmund Data Bank. We thereby obtain, for the first time, a complete set of UNIQUAC parameters for all binary systems of these components, which allows us to predict, in principle, activity coefficients at arbitrary temperature and composition for any combination of these components, not only for binary but also for multicomponent systems. The hybrid model even outperforms the best available physical model for predicting activity coefficients, the modified UNIFAC (Dortmund) model. The Royal Society of Chemistry 2022-04-04 /pmc/articles/PMC9067573/ /pubmed/35655876 http://dx.doi.org/10.1039/d1sc07210b Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by/3.0/
spellingShingle Chemistry
Jirasek, Fabian
Bamler, Robert
Fellenz, Sophie
Bortz, Michael
Kloft, Marius
Mandt, Stephan
Hasse, Hans
Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
title Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
title_full Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
title_fullStr Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
title_full_unstemmed Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
title_short Making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
title_sort making thermodynamic models of mixtures predictive by machine learning: matrix completion of pair interactions
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9067573/
https://www.ncbi.nlm.nih.gov/pubmed/35655876
http://dx.doi.org/10.1039/d1sc07210b
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