Deep Learning of Activation Energies

Quantitative predictions of reaction properties, such as activation energy, have been limited due to a lack of available training data. Such predictions would be useful for computer-assisted reaction mechanism generation and organic synthesis planning. We develop a template-free deep learning model...

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Main Authors: Grambow, Colin A., Pattanaik, Lagnajit, Green, William H.
Other Authors: Massachusetts Institute of Technology. Department of Chemical Engineering
Format: Article
Published: American Chemical Society (ACS) 2020
Online Access:https://hdl.handle.net/1721.1/125019
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author Grambow, Colin A.
Pattanaik, Lagnajit
Green, William H.
author2 Massachusetts Institute of Technology. Department of Chemical Engineering
author_facet Massachusetts Institute of Technology. Department of Chemical Engineering
Grambow, Colin A.
Pattanaik, Lagnajit
Green, William H.
author_sort Grambow, Colin A.
collection MIT
description Quantitative predictions of reaction properties, such as activation energy, have been limited due to a lack of available training data. Such predictions would be useful for computer-assisted reaction mechanism generation and organic synthesis planning. We develop a template-free deep learning model to predict the activation energy given reactant and product graphs and train the model on a new, diverse data set of gas-phase quantum chemistry reactions. We demonstrate that our model achieves accurate predictions and agrees with an intuitive understanding of chemical reactivity. With the continued generation of quantitative chemical reaction data and the development of methods that leverage such data, we expect many more methods for reactivity prediction to become available in the near future.
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spelling mit-1721.1/1250192022-09-30T21:39:52Z Deep Learning of Activation Energies Grambow, Colin A. Pattanaik, Lagnajit Green, William H. Massachusetts Institute of Technology. Department of Chemical Engineering Quantitative predictions of reaction properties, such as activation energy, have been limited due to a lack of available training data. Such predictions would be useful for computer-assisted reaction mechanism generation and organic synthesis planning. We develop a template-free deep learning model to predict the activation energy given reactant and product graphs and train the model on a new, diverse data set of gas-phase quantum chemistry reactions. We demonstrate that our model achieves accurate predictions and agrees with an intuitive understanding of chemical reactivity. With the continued generation of quantitative chemical reaction data and the development of methods that leverage such data, we expect many more methods for reactivity prediction to become available in the near future. DARPA (Contract ARO W911NF-16-2-0023) 2020-05-05T17:56:54Z 2020-05-05T17:56:54Z 2020-03 Article http://purl.org/eprint/type/JournalArticle 1948-7185 1948-7185 https://hdl.handle.net/1721.1/125019 Grambow, Colin A. et al. "Deep Learning of Activation Energies." Journal of Physical Chemistry Letters 11, 8 (March 2020): 2992-2997 © 2020 American Chemical Society http://dx.doi.org/10.1021/acs.jpclett.0c00500 Journal of Physical Chemistry Letters Article is made available in accordance with the publisher's policy and may be subject to US copyright law. Please refer to the publisher's site for terms of use. application/pdf American Chemical Society (ACS) Prof. William Green
spellingShingle Grambow, Colin A.
Pattanaik, Lagnajit
Green, William H.
Deep Learning of Activation Energies
title Deep Learning of Activation Energies
title_full Deep Learning of Activation Energies
title_fullStr Deep Learning of Activation Energies
title_full_unstemmed Deep Learning of Activation Energies
title_short Deep Learning of Activation Energies
title_sort deep learning of activation energies
url https://hdl.handle.net/1721.1/125019
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