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Atomic-scale identification of the active sites of nanocatalysts

Authors :
Yang, Yao
Zhou, Jihan
Zhao, Zipeng
Sun, Geng
Moniri, Saman
Ophus, Colin
Yang, Yongsoo
Wei, Ziyang
Yuan, Yakun
Zhu, Cheng
Sun, Qiang
Jia, Qingying
Heinz, Hendrik
Ciston, Jim
Ercius, Peter
Sautet, Philippe
Huang, Yu
Miao, Jianwei
Publication Year :
2022

Abstract

Alloy nanocatalysts have found broad applications ranging from fuel cells to catalytic converters and hydrogenation reactions. Despite extensive studies, identifying the active sites of nanocatalysts remains a major challenge due to the heterogeneity of the local atomic environment. Here, we advance atomic electron tomography to determine the 3D local atomic structure, surface morphology and chemical composition of PtNi and Mo-doped PtNi nanocatalysts. Using machine learning trained by density functional theory calculations, we identify the catalytic active sites for the oxygen reduction reaction from experimental 3D atomic coordinates, which are corroborated by electrochemical measurements. By quantifying the structure-activity relationship, we discover a local environment descriptor to explain and predict the catalytic active sites at the atomic level. The ability to determine the 3D atomic structure and chemical species coupled with machine learning is expected to expand our fundamental understanding of a wide range of nanocatalysts.<br />Comment: 37 pages, 16 figures

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2202.09460
Document Type :
Working Paper