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Article Dans Une Revue Physical Chemistry Chemical Physics Année : 2019

NMR shifts in aluminosilicate glasses via machine learning

Résumé

Machine learning (ML) approaches are investigated for the prediction of nuclear magnetic resonance (NMR) parameters in aluminosilicate glasses, for which NMR has proven to be a cutting-edge method over the last decade. DFT computations have emerged as a new dimension for complementing these NMR methods although suffering from severe limitations in terms of size, time and computational resources consumption. While previous approaches tend to use DFT-GIPAW calculations for the prediction of NMR parameters in glassy systems, we propose to employ ML methods, characterized by a speed similar to that of classical molecular dynamics while the accuracy of ab initio methods can be reached. We design ML procedures to predict the isotropic magnetic shielding (σiso) for different multicomponent relevant glass compositions. The ML predictions of σiso deviate from DFT-GIPAW calculations, when including relaxed and room-temperature structures, by 0.7 ppm for 29Si (1.0% of the total span of the calculated ) and 1.5 ppm for 17O (1.9%) in SiO2 glasses, 1.4 ppm for 23Na (1.5%) in Na2O–SiO2 and 1.5 ppm for 27Al (2.1%) in Al2O3–Na2O–SiO2 systems. We compare the performances obtained for a set of three descriptors suitable for encoding atomic local environments information (atom-centered representations) together with seven popular ML algorithms with a focus on the simple (but robust) linear ridge regression (LRR) and the popular smooth overlap of atomic positions (SOAP) descriptor.
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Dates et versions

cea-02265806 , version 1 (12-08-2019)

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Ziyad Chaker, Mathieu Salanne, Jean-Marc Delaye, Thibault Charpentier. NMR shifts in aluminosilicate glasses via machine learning. Physical Chemistry Chemical Physics, 2019, 21, pp.21709-21725. ⟨10.1039/C9CP02803J⟩. ⟨cea-02265806⟩
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