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Machine learning exciton dynamics

Obtaining the exciton dynamics of large photosynthetic complexes by using mixed quantum mechanics/molecular mechanics (QM/MM) is computationally demanding. We propose a machine learning technique, multi-layer perceptrons, as a tool to reduce the time required to compute excited state energies. With...

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Autores principales: Häse, Florian, Valleau, Stéphanie, Pyzer-Knapp, Edward, Aspuru-Guzik, Alán
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Royal Society of Chemistry 2016
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6020119/
https://www.ncbi.nlm.nih.gov/pubmed/30155164
http://dx.doi.org/10.1039/c5sc04786b
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author Häse, Florian
Valleau, Stéphanie
Pyzer-Knapp, Edward
Aspuru-Guzik, Alán
author_facet Häse, Florian
Valleau, Stéphanie
Pyzer-Knapp, Edward
Aspuru-Guzik, Alán
author_sort Häse, Florian
collection PubMed
description Obtaining the exciton dynamics of large photosynthetic complexes by using mixed quantum mechanics/molecular mechanics (QM/MM) is computationally demanding. We propose a machine learning technique, multi-layer perceptrons, as a tool to reduce the time required to compute excited state energies. With this approach we predict time-dependent density functional theory (TDDFT) excited state energies of bacteriochlorophylls in the Fenna–Matthews–Olson (FMO) complex. Additionally we compute spectral densities and exciton populations from the predictions. Different methods to determine multi-layer perceptron training sets are introduced, leading to several initial data selections. In addition, we compute spectral densities and exciton populations. Once multi-layer perceptrons are trained, predicting excited state energies was found to be significantly faster than the corresponding QM/MM calculations. We showed that multi-layer perceptrons can successfully reproduce the energies of QM/MM calculations to a high degree of accuracy with prediction errors contained within 0.01 eV (0.5%). Spectral densities and exciton dynamics are also in agreement with the TDDFT results. The acceleration and accurate prediction of dynamics strongly encourage the combination of machine learning techniques with ab initio methods.
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spelling pubmed-60201192018-08-28 Machine learning exciton dynamics Häse, Florian Valleau, Stéphanie Pyzer-Knapp, Edward Aspuru-Guzik, Alán Chem Sci Chemistry Obtaining the exciton dynamics of large photosynthetic complexes by using mixed quantum mechanics/molecular mechanics (QM/MM) is computationally demanding. We propose a machine learning technique, multi-layer perceptrons, as a tool to reduce the time required to compute excited state energies. With this approach we predict time-dependent density functional theory (TDDFT) excited state energies of bacteriochlorophylls in the Fenna–Matthews–Olson (FMO) complex. Additionally we compute spectral densities and exciton populations from the predictions. Different methods to determine multi-layer perceptron training sets are introduced, leading to several initial data selections. In addition, we compute spectral densities and exciton populations. Once multi-layer perceptrons are trained, predicting excited state energies was found to be significantly faster than the corresponding QM/MM calculations. We showed that multi-layer perceptrons can successfully reproduce the energies of QM/MM calculations to a high degree of accuracy with prediction errors contained within 0.01 eV (0.5%). Spectral densities and exciton dynamics are also in agreement with the TDDFT results. The acceleration and accurate prediction of dynamics strongly encourage the combination of machine learning techniques with ab initio methods. Royal Society of Chemistry 2016-08-01 2016-04-01 /pmc/articles/PMC6020119/ /pubmed/30155164 http://dx.doi.org/10.1039/c5sc04786b Text en This journal is © The Royal Society of Chemistry 2016 http://creativecommons.org/licenses/by-nc/3.0/ This article is freely available. This article is licensed under a Creative Commons Attribution Non Commercial 3.0 Unported Licence (CC BY-NC 3.0)
spellingShingle Chemistry
Häse, Florian
Valleau, Stéphanie
Pyzer-Knapp, Edward
Aspuru-Guzik, Alán
Machine learning exciton dynamics
title Machine learning exciton dynamics
title_full Machine learning exciton dynamics
title_fullStr Machine learning exciton dynamics
title_full_unstemmed Machine learning exciton dynamics
title_short Machine learning exciton dynamics
title_sort machine learning exciton dynamics
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC6020119/
https://www.ncbi.nlm.nih.gov/pubmed/30155164
http://dx.doi.org/10.1039/c5sc04786b
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