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Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance

[Image: see text] Advanced computational methods are being actively sought to address the challenges associated with the discovery and development of new combinatorial materials, such as formulations. A widely adopted approach involves domain-informed high-throughput screening of individual componen...

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Autores principales: Sharma, Vidushi, Giammona, Maxwell, Zubarev, Dmitry, Tek, Andy, Nugyuen, Khanh, Sundberg, Linda, Congiu, Daniele, La, Young-Hye
Formato: Online Artículo Texto
Lenguaje:English
Publicado: American Chemical Society 2023
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10685446/
https://www.ncbi.nlm.nih.gov/pubmed/37948621
http://dx.doi.org/10.1021/acs.jcim.3c01030
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author Sharma, Vidushi
Giammona, Maxwell
Zubarev, Dmitry
Tek, Andy
Nugyuen, Khanh
Sundberg, Linda
Congiu, Daniele
La, Young-Hye
author_facet Sharma, Vidushi
Giammona, Maxwell
Zubarev, Dmitry
Tek, Andy
Nugyuen, Khanh
Sundberg, Linda
Congiu, Daniele
La, Young-Hye
author_sort Sharma, Vidushi
collection PubMed
description [Image: see text] Advanced computational methods are being actively sought to address the challenges associated with the discovery and development of new combinatorial materials, such as formulations. A widely adopted approach involves domain-informed high-throughput screening of individual components that can be combined together to form a formulation. This manages to accelerate the discovery of new compounds for a target application but still leaves the process of identifying the right “formulation” from the shortlisted chemical space largely a laboratory experiment-driven process. We report a deep learning model, the Formulation Graph Convolution Network (F-GCN), that can map the structure-composition relationship of the formulation constituents to the property of liquid formulation as a whole. Multiple GCNs are assembled in parallel that featurize formulation constituents domain-intuitively on the fly. The resulting molecular descriptors are scaled based on the respective constituent’s molar percentage in the formulation, followed by integration into a combined formulation descriptor that represents the complete formulation to an external learning architecture. The use case of the proposed formulation learning model is demonstrated for battery electrolytes by training and testing it on two exemplary data sets representing electrolyte formulations vs battery performance: one data set is sourced from the literature about Li/Cu half-cells, while the other is obtained by lab experiments related to lithium-iodide full-cell chemistry. The model is shown to predict performance metrics such as Coulombic efficiency (CE) and specific capacity of new electrolyte formulations with the lowest reported errors. The best-performing F-GCN model uses molecular descriptors derived from molecular graphs (GCNs) that are informed with HOMO–LUMO and electric moment properties of the molecules using a knowledge transfer technique.
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spelling pubmed-106854462023-11-30 Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance Sharma, Vidushi Giammona, Maxwell Zubarev, Dmitry Tek, Andy Nugyuen, Khanh Sundberg, Linda Congiu, Daniele La, Young-Hye J Chem Inf Model [Image: see text] Advanced computational methods are being actively sought to address the challenges associated with the discovery and development of new combinatorial materials, such as formulations. A widely adopted approach involves domain-informed high-throughput screening of individual components that can be combined together to form a formulation. This manages to accelerate the discovery of new compounds for a target application but still leaves the process of identifying the right “formulation” from the shortlisted chemical space largely a laboratory experiment-driven process. We report a deep learning model, the Formulation Graph Convolution Network (F-GCN), that can map the structure-composition relationship of the formulation constituents to the property of liquid formulation as a whole. Multiple GCNs are assembled in parallel that featurize formulation constituents domain-intuitively on the fly. The resulting molecular descriptors are scaled based on the respective constituent’s molar percentage in the formulation, followed by integration into a combined formulation descriptor that represents the complete formulation to an external learning architecture. The use case of the proposed formulation learning model is demonstrated for battery electrolytes by training and testing it on two exemplary data sets representing electrolyte formulations vs battery performance: one data set is sourced from the literature about Li/Cu half-cells, while the other is obtained by lab experiments related to lithium-iodide full-cell chemistry. The model is shown to predict performance metrics such as Coulombic efficiency (CE) and specific capacity of new electrolyte formulations with the lowest reported errors. The best-performing F-GCN model uses molecular descriptors derived from molecular graphs (GCNs) that are informed with HOMO–LUMO and electric moment properties of the molecules using a knowledge transfer technique. American Chemical Society 2023-11-10 /pmc/articles/PMC10685446/ /pubmed/37948621 http://dx.doi.org/10.1021/acs.jcim.3c01030 Text en © 2023 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 Sharma, Vidushi
Giammona, Maxwell
Zubarev, Dmitry
Tek, Andy
Nugyuen, Khanh
Sundberg, Linda
Congiu, Daniele
La, Young-Hye
Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance
title Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance
title_full Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance
title_fullStr Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance
title_full_unstemmed Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance
title_short Formulation Graphs for Mapping Structure-Composition of Battery Electrolytes to Device Performance
title_sort formulation graphs for mapping structure-composition of battery electrolytes to device performance
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC10685446/
https://www.ncbi.nlm.nih.gov/pubmed/37948621
http://dx.doi.org/10.1021/acs.jcim.3c01030
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