Discovery of Unconventional Proton‐Conducting Inorganic Solids via Defect‐Chemistry‐Trained, Interpretable Machine Learning

Author:

Fujii Susumu12ORCID,Shimizu Yuta345,Hyodo Junji35ORCID,Kuwabara Akihide2ORCID,Yamazaki Yoshihiro345ORCID

Affiliation:

1. Division of Materials and Manufacturing Science Osaka University 2‐1 Yamadaoka, Suita Osaka 565‐0871 Japan

2. Nanostructures Research Laboratory Japan Fine Ceramics Center 2‐4‐1, Mutsuno, Atsuta Nagoya 456‐8587 Japan

3. INAMORI Frontier Research Center Kyushu University 744 Motooka Fukuoka 819‐0395 Japan

4. Department of Materials Science and Engineering Kyushu University 744 Motooka Fukuoka 819‐0395 Japan

5. Kyushu University Platform of Inter‐/Transdisciplinary Energy Research (Q‐PIT) Kyushu University 744 Motooka Fukuoka 819‐0395 Japan

Abstract

AbstractHigh‐throughput computational screening and machine learning hold significant potential for exploring diverse chemical compositions and discovering novel inorganic solids. However, the complexity of point defects, which occur in all inorganic solids and are often crucial to their functionality and synthesizability, presents significant challenges. Here, this study presents a defect‐chemistry‐trained, interpretable machine learning approach, designed to accelerate the exploration and discovery of unconventional proton‐conducting inorganic solid electrolytes. By considering dopant dissolution and hydration reactions, the machine learning models provide quantitative predictions and physical interpretations for synthesizable host–dopant combinations with hydration capabilities across various structures. Utilizing these insights, two unconventional proton conductors, Pb‐doped Bi12SiO20 sillenite and eulytite‐type Sr‐doped Bi4Ge3O12, are discovered in the first two synthesis trials. Notably, the Pb‐doped Bi12SiO20 represents an unprecedented class of proton‐conducting electrolyte composed solely of groups 14 and 15 cations and featuring a sillenite structure. It exhibits unique and fast 3D proton conduction along a loosely bonded BiO5 network. This study demonstrates an efficient approach for exploring novel inorganic materials.

Funder

Kyushu University

Japan Society for the Promotion of Science

Japan Science and Technology Agency

Publisher

Wiley

Subject

General Materials Science,Renewable Energy, Sustainability and the Environment

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