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A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials

Solid-state nuclear magnetic resonance (ssNMR) provides local environments and dynamic fingerprints of alkali ions in paramagnetic battery materials. Linking the local ionic environments and NMR signals requires expensive first-principles computational tools that have been developed for over a decad...

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Autores principales: Lin, Min, Xiong, Jingfang, Su, Mintao, Wang, Feng, Liu, Xiangsi, Hou, Yifan, Fu, Riqiang, Yang, Yong, Cheng, Jun
Formato: Online Artículo Texto
Lenguaje:English
Publicado: The Royal Society of Chemistry 2022
Materias:
Acceso en línea:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9258323/
https://www.ncbi.nlm.nih.gov/pubmed/35865892
http://dx.doi.org/10.1039/d2sc01306a
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author Lin, Min
Xiong, Jingfang
Su, Mintao
Wang, Feng
Liu, Xiangsi
Hou, Yifan
Fu, Riqiang
Yang, Yong
Cheng, Jun
author_facet Lin, Min
Xiong, Jingfang
Su, Mintao
Wang, Feng
Liu, Xiangsi
Hou, Yifan
Fu, Riqiang
Yang, Yong
Cheng, Jun
author_sort Lin, Min
collection PubMed
description Solid-state nuclear magnetic resonance (ssNMR) provides local environments and dynamic fingerprints of alkali ions in paramagnetic battery materials. Linking the local ionic environments and NMR signals requires expensive first-principles computational tools that have been developed for over a decade. Nevertheless, the assignment of the dynamic NMR spectra of high-rate battery materials is still challenging because the local structures and dynamic information of alkali ions are highly correlated and difficult to acquire. Herein, we develop a novel machine learning (ML) protocol that could not only quickly sample atomic configurations but also predict chemical shifts efficiently, which enables us to calculate dynamic NMR shifts with the accuracy of density functional theory (DFT). Using structurally well-defined P2-type Na(2/3)(Mg(1/3)Mn(2/3))O(2) as an example, we validate the ML protocol and show the significance of dynamic effects on chemical shifts. Moreover, with the protocol, it is demonstrated that the two experimental (23)Na shifts (1406 and 1493 ppm) of P2-type Na(2/3)(Ni(1/3)Mn(2/3))O(2) originate from two stacking sequences of transition metal (TM) layers for the first time, which correspond to space groups P6(3)/mcm and P6(3)22, respectively. This ML protocol could help to correlate dynamic ssNMR spectra with the local structures and fast transport of alkali ions and is expected to be applicable to a wide range of fast dynamic systems.
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spelling pubmed-92583232022-07-20 A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials Lin, Min Xiong, Jingfang Su, Mintao Wang, Feng Liu, Xiangsi Hou, Yifan Fu, Riqiang Yang, Yong Cheng, Jun Chem Sci Chemistry Solid-state nuclear magnetic resonance (ssNMR) provides local environments and dynamic fingerprints of alkali ions in paramagnetic battery materials. Linking the local ionic environments and NMR signals requires expensive first-principles computational tools that have been developed for over a decade. Nevertheless, the assignment of the dynamic NMR spectra of high-rate battery materials is still challenging because the local structures and dynamic information of alkali ions are highly correlated and difficult to acquire. Herein, we develop a novel machine learning (ML) protocol that could not only quickly sample atomic configurations but also predict chemical shifts efficiently, which enables us to calculate dynamic NMR shifts with the accuracy of density functional theory (DFT). Using structurally well-defined P2-type Na(2/3)(Mg(1/3)Mn(2/3))O(2) as an example, we validate the ML protocol and show the significance of dynamic effects on chemical shifts. Moreover, with the protocol, it is demonstrated that the two experimental (23)Na shifts (1406 and 1493 ppm) of P2-type Na(2/3)(Ni(1/3)Mn(2/3))O(2) originate from two stacking sequences of transition metal (TM) layers for the first time, which correspond to space groups P6(3)/mcm and P6(3)22, respectively. This ML protocol could help to correlate dynamic ssNMR spectra with the local structures and fast transport of alkali ions and is expected to be applicable to a wide range of fast dynamic systems. The Royal Society of Chemistry 2022-06-13 /pmc/articles/PMC9258323/ /pubmed/35865892 http://dx.doi.org/10.1039/d2sc01306a Text en This journal is © The Royal Society of Chemistry https://creativecommons.org/licenses/by-nc/3.0/
spellingShingle Chemistry
Lin, Min
Xiong, Jingfang
Su, Mintao
Wang, Feng
Liu, Xiangsi
Hou, Yifan
Fu, Riqiang
Yang, Yong
Cheng, Jun
A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials
title A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials
title_full A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials
title_fullStr A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials
title_full_unstemmed A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials
title_short A machine learning protocol for revealing ion transport mechanisms from dynamic NMR shifts in paramagnetic battery materials
title_sort machine learning protocol for revealing ion transport mechanisms from dynamic nmr shifts in paramagnetic battery materials
topic Chemistry
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9258323/
https://www.ncbi.nlm.nih.gov/pubmed/35865892
http://dx.doi.org/10.1039/d2sc01306a
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