A Machine Learning‐Enhanced Framework for the Accelerated Development of Spinel Oxide Electrocatalysts

Author:

Jeong Incheol12ORCID,Shim Yoonsu3,Oh Seeun2,Yuk Jong Min3,Roh Ki‐Min1,Lee Chan‐Woo4,Lee Kang Taek25ORCID

Affiliation:

1. Resources Utilization Research Center KIGAM Daejeon 34132 South Korea

2. Department of Mechanical Engineering KAIST Daejeon 34141 South Korea

3. Department of Materials Science and Engineering KAIST Daejeon 34141 South Korea

4. Energy AI & Computational Science Laboratory KIER Daejeon 34129 South Korea

5. KAIST Graduate School of Green Growth and Sustainability Daejeon 34141 South Korea

Abstract

AbstractThe surging demand for sustainable energy has spurred intensive research into electrochemical conversion devices such as fuel cells, water splitting, and metal‐air batteries. The performance of oxygen electrocatalysts significantly impacts overall electrochemical efficiency. Recently, spinel oxides (AB2O4) have emerged as promising candidates; however, the scarcity of prior studies underscores the need for a thorough and comprehensive exploration. This study presents a computational framework that integrates machine learning and density functional theory (DFT) calculations for the systematic screening of 1240 spinel oxides. The data scarcity is addressed while enhancing prediction accuracy. Selected candidates are identified to outperform the benchmarking perovskite oxide. Additionally, their potential as mixed ionic and electronic conductors with a 3D network of ion diffusion pathways is highlighted. To further enhance the understanding and prediction of stability, catalytic activity, and reaction mechanisms, a new undemanding descriptor is introduced: the covalency indicator. This study offers a design principle for the development of high‐performance spinel oxide oxygen electrocatalysts.

Funder

National Research Foundation of Korea

Ministry of Science and ICT, South Korea

Publisher

Wiley

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