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Predicting phosphorescence energies and inferring wavefunction localization with machine learning

Phosphorescence is commonly utilized for applications including light-emitting diodes and photovoltaics. Machine learning (ML) approaches trained on ab initio datasets of singlet–triplet energy gaps may expedite the discovery of phosphorescent compounds with the desired emission energies. However, w...

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Autores principales: Sifain, Andrew E., Lystrom, Levi, Messerly, Richard A., Smith, Justin S., Nebgen, Benjamin, Barros, Kipton, Tretiak, Sergei, Lubbers, Nicholas, Gifford, Brendan J.
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2021
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8336587/
https://www.ncbi.nlm.nih.gov/pubmed/34447529
http://dx.doi.org/10.1039/d1sc02136b
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author Sifain, Andrew E.
Lystrom, Levi
Messerly, Richard A.
Smith, Justin S.
Nebgen, Benjamin
Barros, Kipton
Tretiak, Sergei
Lubbers, Nicholas
Gifford, Brendan J.
author_facet Sifain, Andrew E.
Lystrom, Levi
Messerly, Richard A.
Smith, Justin S.
Nebgen, Benjamin
Barros, Kipton
Tretiak, Sergei
Lubbers, Nicholas
Gifford, Brendan J.
author_sort Sifain, Andrew E.
collection PubMed
description Phosphorescence is commonly utilized for applications including light-emitting diodes and photovoltaics. Machine learning (ML) approaches trained on ab initio datasets of singlet–triplet energy gaps may expedite the discovery of phosphorescent compounds with the desired emission energies. However, we show that standard ML approaches for modeling potential energy surfaces inaccurately predict singlet–triplet energy gaps due to the failure to account for spatial localities of spin transitions. To solve this, we introduce localization layers in a neural network model that weight atomic contributions to the energy gap, thereby allowing the model to isolate the most determinative chemical environments. Trained on the singlet–triplet energy gaps of organic molecules, we apply our method to an out-of-sample test set of large phosphorescent compounds and demonstrate the substantial improvement that localization layers have on predicting their phosphorescence energies. Remarkably, the inferred localization weights have a strong relationship with the ab initio spin density of the singlet–triplet transition, and thus infer localities of the molecule that determine the spin transition, despite the fact that no direct electronic information was provided during training. The use of localization layers is expected to improve the modeling of many localized, non-extensive phenomena and could be implemented in any atom-centered neural network model.
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spelling pubmed-83365872021-08-25 Predicting phosphorescence energies and inferring wavefunction localization with machine learning Sifain, Andrew E. Lystrom, Levi Messerly, Richard A. Smith, Justin S. Nebgen, Benjamin Barros, Kipton Tretiak, Sergei Lubbers, Nicholas Gifford, Brendan J. Chem Sci Chemistry Phosphorescence is commonly utilized for applications including light-emitting diodes and photovoltaics. Machine learning (ML) approaches trained on ab initio datasets of singlet–triplet energy gaps may expedite the discovery of phosphorescent compounds with the desired emission energies. However, we show that standard ML approaches for modeling potential energy surfaces inaccurately predict singlet–triplet energy gaps due to the failure to account for spatial localities of spin transitions. To solve this, we introduce localization layers in a neural network model that weight atomic contributions to the energy gap, thereby allowing the model to isolate the most determinative chemical environments. Trained on the singlet–triplet energy gaps of organic molecules, we apply our method to an out-of-sample test set of large phosphorescent compounds and demonstrate the substantial improvement that localization layers have on predicting their phosphorescence energies. Remarkably, the inferred localization weights have a strong relationship with the ab initio spin density of the singlet–triplet transition, and thus infer localities of the molecule that determine the spin transition, despite the fact that no direct electronic information was provided during training. The use of localization layers is expected to improve the modeling of many localized, non-extensive phenomena and could be implemented in any atom-centered neural network model. The Royal Society of Chemistry 2021-06-29 /pmc/articles/PMC8336587/ /pubmed/34447529 http://dx.doi.org/10.1039/d1sc02136b Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Sifain, Andrew E.
Lystrom, Levi
Messerly, Richard A.
Smith, Justin S.
Nebgen, Benjamin
Barros, Kipton
Tretiak, Sergei
Lubbers, Nicholas
Gifford, Brendan J.
Predicting phosphorescence energies and inferring wavefunction localization with machine learning
title Predicting phosphorescence energies and inferring wavefunction localization with machine learning
title_full Predicting phosphorescence energies and inferring wavefunction localization with machine learning
title_fullStr Predicting phosphorescence energies and inferring wavefunction localization with machine learning
title_full_unstemmed Predicting phosphorescence energies and inferring wavefunction localization with machine learning
title_short Predicting phosphorescence energies and inferring wavefunction localization with machine learning
title_sort predicting phosphorescence energies and inferring wavefunction localization with machine learning
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC8336587/
https://www.ncbi.nlm.nih.gov/pubmed/34447529
http://dx.doi.org/10.1039/d1sc02136b
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