ジャーナル論文 Construction of Machine Learning Potentials toward the Exploration of Alloy Cluster Catalysts
Kentaro Miyamoto (author) (この著者で検索)
;
Koji Shimizu (author) (この著者で検索)
;
Anh Khoa Augustin Lu (author) (この著者で検索)
ORCID SAMURAI ;
Satoshi Watanabe (author) (この著者で検索)
コレクション

引用
Kentaro Miyamoto, Koji Shimizu, Anh Khoa Augustin Lu, Satoshi Watanabe. Construction of Machine Learning Potentials toward the Exploration of Alloy Cluster Catalysts. e-Journal of Surface Science and Nanotechnology. 2025, 23 (2), 2025-028. https://doi.org/10.1380/ejssnt.2025-028

説明:

(abstract)

High entropy alloys (HEAs) are expected to show excellent performance in various fields, such as catalysts and high-temperature structural materials, but the huge number of configurations makes it difficult to find the optimal compositions for HEAs. In this study, machine learning potentials were developed to accurately predict the total and H/CO adsorption energies of multi-element slab models and cluster models of various sizes and shapes, based on density functional theory calculations.

権利情報:

キーワード: High entropy alloys, Machine learning, Density functional theory, Catalysts, CO2 reduction reaction

刊行年月日: 2025-05-17

出版者: Surface Science Society Japan

掲載誌:

  • e-Journal of Surface Science and Nanotechnology (ISSN: 13480391) vol. 23 issue. 2 p. 188-192 2025-028

研究助成金:

  • Japan Science and Technology Agency (JST) JPMJSC21E2 (触媒・電池応用に向けたハイエントロピー合金材料の理論的設計)

原稿種別: 出版者版 (Version of record)

MDR DOI:

公開URL: https://doi.org/10.1380/ejssnt.2025-028

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更新時刻: 2026-05-18 15:04:41 +0900

MDRでの公開時刻: 2026-05-18 16:23:12 +0900

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