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Elucidating oxide-ion and proton transport in ionic conductors using machine learning potentials
by
Fop, Sacha
, Dawson, James A.
, Mclaughlin, Abbie C.
, Zhou, Ying
in
639/301
/ 639/301/1034/1035
/ 639/301/299
/ Accuracy
/ Characterization and Evaluation of Materials
/ Chemistry and Materials Science
/ Computational Intelligence
/ Conductors
/ Density functional theory
/ Diffusion coefficient
/ Efficiency
/ Electrolytic cells
/ Fuel cells
/ Ion transport
/ Learning algorithms
/ Machine learning
/ Materials Science
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical Modeling and Industrial Mathematics
/ Mechanical properties
/ Molecular dynamics
/ Molten salt electrolytes
/ Protons
/ Simulation
/ Solid electrolytes
/ Solid oxide fuel cells
/ Tensors
/ Theoretical
2025
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Elucidating oxide-ion and proton transport in ionic conductors using machine learning potentials
by
Fop, Sacha
, Dawson, James A.
, Mclaughlin, Abbie C.
, Zhou, Ying
in
639/301
/ 639/301/1034/1035
/ 639/301/299
/ Accuracy
/ Characterization and Evaluation of Materials
/ Chemistry and Materials Science
/ Computational Intelligence
/ Conductors
/ Density functional theory
/ Diffusion coefficient
/ Efficiency
/ Electrolytic cells
/ Fuel cells
/ Ion transport
/ Learning algorithms
/ Machine learning
/ Materials Science
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical Modeling and Industrial Mathematics
/ Mechanical properties
/ Molecular dynamics
/ Molten salt electrolytes
/ Protons
/ Simulation
/ Solid electrolytes
/ Solid oxide fuel cells
/ Tensors
/ Theoretical
2025
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While trying to remove the title from your shelf something went wrong :( Kindly try again later!
Do you wish to request the book?
Elucidating oxide-ion and proton transport in ionic conductors using machine learning potentials
by
Fop, Sacha
, Dawson, James A.
, Mclaughlin, Abbie C.
, Zhou, Ying
in
639/301
/ 639/301/1034/1035
/ 639/301/299
/ Accuracy
/ Characterization and Evaluation of Materials
/ Chemistry and Materials Science
/ Computational Intelligence
/ Conductors
/ Density functional theory
/ Diffusion coefficient
/ Efficiency
/ Electrolytic cells
/ Fuel cells
/ Ion transport
/ Learning algorithms
/ Machine learning
/ Materials Science
/ Mathematical and Computational Engineering
/ Mathematical and Computational Physics
/ Mathematical Modeling and Industrial Mathematics
/ Mechanical properties
/ Molecular dynamics
/ Molten salt electrolytes
/ Protons
/ Simulation
/ Solid electrolytes
/ Solid oxide fuel cells
/ Tensors
/ Theoretical
2025
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Elucidating oxide-ion and proton transport in ionic conductors using machine learning potentials
Journal Article
Elucidating oxide-ion and proton transport in ionic conductors using machine learning potentials
2025
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Overview
The design and understanding of oxide-ion and proton transport in solid electrolytes are pivotal to the development of fuel cells that can operate at reduced temperatures of <600
∘
C. Atomistic modelling and machine learning are playing ever more crucial roles in achieving this objective. In this study, using passive and active learning techniques, we develop moment tensor potentials (MTPs) for two promising ionic conductors, namely, Ba
7
Nb
4
MoO
20
and Sr
3
V
2
O
8
. Our MTPs accurately reproduce ab initio molecular dynamics data and demonstrate strong agreement with density functional theory calculations for forces, energies and stresses. They successfully predict diffusion coefficients and conductivities for both oxide ions and protons, showing excellent agreement with experimental data and ab initio molecular dynamics results. Additionally, the MTPs accurately estimate migration barriers, thereby underscoring their robustness and transferability. Our findings highlight the potential of MTPs in significantly reducing computational costs while maintaining high accuracy, making them invaluable for simulating complex ion transport mechanisms and supporting the development of next-generation solid oxide fuel cells.
Publisher
Nature Publishing Group UK,Nature Publishing Group,Nature Portfolio
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