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Machine learning for quantum dynamics: deep learning of excitation energy transfer properties

Understanding the relationship between the structure of light-harvesting systems and their excitation energy transfer properties is of fundamental importance in many applications including the development of next generation photovoltaics. Natural light harvesting in photosynthesis shows remarkable e...

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Autores principales: Häse, Florian, Kreisbeck, Christoph, Aspuru-Guzik, Alán
Formato: Online Artículo Texto
Lenguaje:English
Publicado: Royal Society of Chemistry 2017
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5863613/
https://www.ncbi.nlm.nih.gov/pubmed/29619189
http://dx.doi.org/10.1039/c7sc03542j
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author Häse, Florian
Kreisbeck, Christoph
Aspuru-Guzik, Alán
author_facet Häse, Florian
Kreisbeck, Christoph
Aspuru-Guzik, Alán
author_sort Häse, Florian
collection PubMed
description Understanding the relationship between the structure of light-harvesting systems and their excitation energy transfer properties is of fundamental importance in many applications including the development of next generation photovoltaics. Natural light harvesting in photosynthesis shows remarkable excitation energy transfer properties, which suggests that pigment–protein complexes could serve as blueprints for the design of nature inspired devices. Mechanistic insights into energy transport dynamics can be gained by leveraging numerically involved propagation schemes such as the hierarchical equations of motion (HEOM). Solving these equations, however, is computationally costly due to the adverse scaling with the number of pigments. Therefore virtual high-throughput screening, which has become a powerful tool in material discovery, is less readily applicable for the search of novel excitonic devices. We propose the use of artificial neural networks to bypass the computational limitations of established techniques for exploring the structure-dynamics relation in excitonic systems. Once trained, our neural networks reduce computational costs by several orders of magnitudes. Our predicted transfer times and transfer efficiencies exhibit similar or even higher accuracies than frequently used approximate methods such as secular Redfield theory.
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spelling pubmed-58636132018-04-04 Machine learning for quantum dynamics: deep learning of excitation energy transfer properties Häse, Florian Kreisbeck, Christoph Aspuru-Guzik, Alán Chem Sci Chemistry Understanding the relationship between the structure of light-harvesting systems and their excitation energy transfer properties is of fundamental importance in many applications including the development of next generation photovoltaics. Natural light harvesting in photosynthesis shows remarkable excitation energy transfer properties, which suggests that pigment–protein complexes could serve as blueprints for the design of nature inspired devices. Mechanistic insights into energy transport dynamics can be gained by leveraging numerically involved propagation schemes such as the hierarchical equations of motion (HEOM). Solving these equations, however, is computationally costly due to the adverse scaling with the number of pigments. Therefore virtual high-throughput screening, which has become a powerful tool in material discovery, is less readily applicable for the search of novel excitonic devices. We propose the use of artificial neural networks to bypass the computational limitations of established techniques for exploring the structure-dynamics relation in excitonic systems. Once trained, our neural networks reduce computational costs by several orders of magnitudes. Our predicted transfer times and transfer efficiencies exhibit similar or even higher accuracies than frequently used approximate methods such as secular Redfield theory. Royal Society of Chemistry 2017-12-01 2017-10-23 /pmc/articles/PMC5863613/ /pubmed/29619189 http://dx.doi.org/10.1039/c7sc03542j Text en This journal is © The Royal Society of Chemistry 2017 http://creativecommons.org/licenses/by/3.0/ This article is freely available. This article is licensed under a Creative Commons Attribution 3.0 Unported Licence (CC BY 3.0)
spellingShingle Chemistry
Häse, Florian
Kreisbeck, Christoph
Aspuru-Guzik, Alán
Machine learning for quantum dynamics: deep learning of excitation energy transfer properties
title Machine learning for quantum dynamics: deep learning of excitation energy transfer properties
title_full Machine learning for quantum dynamics: deep learning of excitation energy transfer properties
title_fullStr Machine learning for quantum dynamics: deep learning of excitation energy transfer properties
title_full_unstemmed Machine learning for quantum dynamics: deep learning of excitation energy transfer properties
title_short Machine learning for quantum dynamics: deep learning of excitation energy transfer properties
title_sort machine learning for quantum dynamics: deep learning of excitation energy transfer properties
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC5863613/
https://www.ncbi.nlm.nih.gov/pubmed/29619189
http://dx.doi.org/10.1039/c7sc03542j
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