Literature DB >> 26730889

Ab Initio Quality NMR Parameters in Solid-State Materials Using a High-Dimensional Neural-Network Representation.

Jérôme Cuny1, Yu Xie2, Chris J Pickard3, Ali A Hassanali4.   

Abstract

Nuclear magnetic resonance (NMR) spectroscopy is one of the most powerful experimental tools to probe the local atomic order of a wide range of solid-state compounds. However, due to the complexity of the related spectra, in particular for amorphous materials, their interpretation in terms of structural information is often challenging. These difficulties can be overcome by combining molecular dynamics simulations to generate realistic structural models with an ab initio evaluation of the corresponding chemical shift and quadrupolar coupling tensors. However, due to computational constraints, this approach is limited to relatively small system sizes which, for amorphous materials, prevents an adequate statistical sampling of the distribution of the local environments that is required to quantitatively describe the system. In this work, we present an approach to efficiently and accurately predict the NMR parameters of very large systems. This is achieved by using a high-dimensional neural-network representation of NMR parameters that are calculated using an ab initio formalism. To illustrate the potential of this approach, we applied this neural-network NMR (NN-NMR) method on the (17)O and (29)Si quadrupolar coupling and chemical shift parameters of various crystalline silica polymorphs and silica glasses. This approach is, in principal, general and has the potential to be applied to predict the NMR properties of various materials.

Entities:  

Year:  2016        PMID: 26730889     DOI: 10.1021/acs.jctc.5b01006

Source DB:  PubMed          Journal:  J Chem Theory Comput        ISSN: 1549-9618            Impact factor:   6.006


  5 in total

1.  Gaussian Process Regression for Materials and Molecules.

Authors:  Volker L Deringer; Albert P Bartók; Noam Bernstein; David M Wilkins; Michele Ceriotti; Gábor Csányi
Journal:  Chem Rev       Date:  2021-08-16       Impact factor: 60.622

2.  Learning to Make Chemical Predictions: the Interplay of Feature Representation, Data, and Machine Learning Methods.

Authors:  Mojtaba Haghighatlari; Jie Li; Farnaz Heidar-Zadeh; Yuchen Liu; Xingyi Guan; Teresa Head-Gordon
Journal:  Chem       Date:  2020-06-16       Impact factor: 22.804

3.  Data-driven approach for the prediction and interpretation of core-electron loss spectroscopy.

Authors:  Shin Kiyohara; Tomohiro Miyata; Koji Tsuda; Teruyasu Mizoguchi
Journal:  Sci Rep       Date:  2018-09-06       Impact factor: 4.379

4.  Machine learning-accelerated quantum mechanics-based atomistic simulations for industrial applications.

Authors:  Tobias Morawietz; Nongnuch Artrith
Journal:  J Comput Aided Mol Des       Date:  2020-10-09       Impact factor: 3.686

5.  Chemical shifts in molecular solids by machine learning.

Authors:  Federico M Paruzzo; Albert Hofstetter; Félix Musil; Sandip De; Michele Ceriotti; Lyndon Emsley
Journal:  Nat Commun       Date:  2018-10-29       Impact factor: 14.919

  5 in total

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