TY - JOUR
T1 - Emerging computational and machine learning methodologies for proton-conducting oxides
T2 - materials discovery and fundamental understanding
AU - Fujii, Susumu
AU - Hyodo, Junji
AU - Shitara, Kazuki
AU - Kuwabara, Akihide
AU - Kasamatsu, Shusuke
AU - Yamazaki, Yoshihiro
N1 - Publisher Copyright:
© 2024 The Author(s). Published by National Institute for Materials Science in partnership with Taylor & Francis Group.
PY - 2024
Y1 - 2024
N2 - This review presents computational and machine learning methodologies developed during a 5-year research project on proton-conducting oxides. The main goal was to develop methodologies that could assist in materials discovery or provide new insights into complex proton-conducting oxides. Through these methodologies, three new proton-conducting oxides, including both perovskite and non-perovskites, have been discovered. In terms of gaining insights, octahedral tilt/distortions and oxygen affinity are found to play a critical role in determining proton diffusivities and conductivities in doped barium zirconates. Replica exchange Monte Carlo approach has enabled to reveal realistic defect configurations, hydration behavior, and their temperature dependence in oxides. Our approach ‘Materials discovery through interpretation’, which integrates new insights or tendencies obtained from computations and experiments to sequential explorations of materials, has also identified perovskites that exhibit proton conductivity exceeding 0.01 S/cm and high chemical stability at 300 (Formula presented.) C.
AB - This review presents computational and machine learning methodologies developed during a 5-year research project on proton-conducting oxides. The main goal was to develop methodologies that could assist in materials discovery or provide new insights into complex proton-conducting oxides. Through these methodologies, three new proton-conducting oxides, including both perovskite and non-perovskites, have been discovered. In terms of gaining insights, octahedral tilt/distortions and oxygen affinity are found to play a critical role in determining proton diffusivities and conductivities in doped barium zirconates. Replica exchange Monte Carlo approach has enabled to reveal realistic defect configurations, hydration behavior, and their temperature dependence in oxides. Our approach ‘Materials discovery through interpretation’, which integrates new insights or tendencies obtained from computations and experiments to sequential explorations of materials, has also identified perovskites that exhibit proton conductivity exceeding 0.01 S/cm and high chemical stability at 300 (Formula presented.) C.
KW - first-principles calculation
KW - hydration
KW - machine learning
KW - materials discovery through interpretation
KW - proton diffusion
KW - Proton-conducting oxides
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U2 - 10.1080/14686996.2024.2416383
DO - 10.1080/14686996.2024.2416383
M3 - Review article
AN - SCOPUS:85209938610
SN - 1468-6996
VL - 25
JO - Science and Technology of Advanced Materials
JF - Science and Technology of Advanced Materials
IS - 1
M1 - 2416383
ER -