説明:
(abstract)The explosive increase in popularity and increased accessibility to artificial intelligence and data science tools have opened the door for exploring previously deemed “too large” experimental spaces efficiently in experimental chemistry. This is of special interest for the field of electrocatalysis, where the development of new materials has relied largely on trial-and-error approaches that are not time- and resource-efficient. By leveraging these approaches, we can more effectively find promising electrocatalyst compositions and synthesis conditions that result in lower overpotentials and higher electrocatalyst durability. In this Technical Note, we use oxygen evolution electrocatalysts as a model to highlight potential pitfalls in the use of data-driven strategies for electrocatalyst development, focusing on the important choice of optimization metrics, normalization of data, and common errors that may appear during these kinds of approaches.
権利情報:
This document is the Accepted Manuscript version of a Published Work that appeared in final form in ACS Electrochemistry, copyright © 2025 American Chemical Society after peer review and technical editing by the publisher. To access the final edited and published work see https://doi.org/10.1021/acselectrochem.5c00153.
キーワード: machine learning
刊行年月日: 2025-09-04
出版者: American Chemical Society (ACS)
掲載誌:
研究助成金:
原稿種別: 著者最終稿 (Accepted manuscript)
MDR DOI: https://doi.org/10.48505/nims.5849
公開URL: https://doi.org/10.1021/acselectrochem.5c00153
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更新時刻: 2026-04-30 12:01:11 +0900
MDRでの公開時刻: 2026-05-23 08:31:12 +0900
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Pitfalls in Artificial Intelligence_revised_clean_v2.docx
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サイズ | 1020KB | 詳細 |