OAK

Active Learning‐Driven Discovery of Sub‐2 Nm High‐Entropy Nanocatalysts for Alkaline Water Splitting

Metadata Downloads
Abstract
AbstractHigh‐entropy nanoparticles (HENPs) present a vast opportunity for the development of advanced electrocatalysts. The optimization of their chemical compositions, including the careful selection and combination of elements, is critical to tailoring HENPs for specific catalytic processes. To reduce the extensive experimental effort involved in composition optimization, active learning techniques can be utilized to predict and suggest materials with enhanced electrocatalytic activity. In this study, sub‐2 nm high‐entropy catalysts incorporating eight transition metal elements are developed through an active learning workflow aimed at identifying optimal compositions. Using initial experimental data, the approach successfully guided the discovery of a new octonary HENP catalyst with state‐of‐the‐art performance in the hydrogen evolution reaction (HER). Catalyst performance is improved within the prediction uncertainty of the machine learning model. For the oxygen evolution reaction (OER), however, the initial model demonstrated limited predictive accuracy, leading to an assessment of the workflow's boundaries. These findings underscore how the integration of curated experimental data with active learning can accelerate electrocatalyst discovery, while also highlighting critical areas for further model refinement.
Author(s)
Perumal, SakthivelHan, Da BeanMarimuthu, ThandapaniLim, Taewaen김현우Seo, Junhyeok
Issued Date
2025-03
Type
Article
DOI
10.1002/adfm.202424887
URI
https://scholar.gist.ac.kr/handle/local/8928
Publisher
John Wiley & Sons Ltd.
Citation
Advanced Functional Materials
ISSN
1616-301X
Appears in Collections:
Department of Chemistry > 1. Journal Articles
공개 및 라이선스
  • 공개 구분공개
파일 목록
  • 관련 파일이 존재하지 않습니다.

Items in Repository are protected by copyright, with all rights reserved, unless otherwise indicated.