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Electronic structure at coarse-grained resolutions from supervised machine learning.


ABSTRACT: Computational studies aimed at understanding conformationally dependent electronic structure in soft materials require a combination of classical and quantum-mechanical simulations, for which the sampling of conformational space can be particularly demanding. Coarse-grained (CG) models provide a means of accessing relevant time scales, but CG configurations must be back-mapped into atomistic representations to perform quantum-chemical calculations, which is computationally intensive and inconsistent with the spatial resolution of the CG models. A machine learning approach, denoted as artificial neural network electronic coarse graining (ANN-ECG), is presented here in which the conformationally dependent electronic structure of a molecule is mapped directly to CG pseudo-atom configurations. By averaging over decimated degrees of freedom, ANN-ECG accelerates simulations by eliminating backmapping and repeated quantum-chemical calculations. The approach is accurate, consistent with the CG spatial resolution, and can be used to identify computationally optimal CG resolutions.

SUBMITTER: Jackson NE 

PROVIDER: S-EPMC6430626 | biostudies-literature | 2019 Mar

REPOSITORIES: biostudies-literature

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Electronic structure at coarse-grained resolutions from supervised machine learning.

Jackson Nicholas E NE   Bowen Alec S AS   Antony Lucas W LW   Webb Michael A MA   Vishwanath Venkatram V   de Pablo Juan J JJ  

Science advances 20190322 3


Computational studies aimed at understanding conformationally dependent electronic structure in soft materials require a combination of classical and quantum-mechanical simulations, for which the sampling of conformational space can be particularly demanding. Coarse-grained (CG) models provide a means of accessing relevant time scales, but CG configurations must be back-mapped into atomistic representations to perform quantum-chemical calculations, which is computationally intensive and inconsis  ...[more]

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