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  5. Carbon nitride supported Fe2 cluster catalysts with superior performance for alkene epoxidation

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Article
en
2018

Carbon nitride supported Fe2 cluster catalysts with superior performance for alkene epoxidation

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en
2018
Vol 9 (1)
Vol. 9
DOI: 10.1038/s41467-018-04845-x

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Lin Gu
Lin Gu

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Shubo Tian
Qiang Fu
Wenxing Chen
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Abstract

Abstract Sub-nano metal clusters often exhibit unique and unexpected properties, which make them particularly attractive as catalysts. Herein, we report a “precursor-preselected” wet-chemistry strategy to synthesize highly dispersed Fe 2 clusters that are supported on mesoporous carbon nitride (mpg-C 3 N 4 ). The obtained Fe 2 /mpg-C 3 N 4 sample exhibits superior catalytic performance for the epoxidation of trans -stilbene to trans -stilbene oxide, showing outstanding selectivity of 93% at high conversion of 91%. Molecular oxygen is the only oxidant and no aldehyde is used as co-reagent. Under the same condition, by contrast, iron porphyrin, single-atom Fe, and small Fe nanoparticles (ca. 3 nm) are nearly reactively inert. First-principles calculations reveal that the unique reactivity of the Fe 2 clusters originates from the formation of active oxygen species. The general applicability of the synthesis approach is further demonstrated by producing other diatomic clusters like Pd 2 and Ir 2 , which lays the foundation for discovering diatomic cluster catalysts.

How to cite this publication

Shubo Tian, Qiang Fu, Wenxing Chen, Quanchen Feng, Zheng Chen, Jian Zhang, Weng‐Chon Cheong, Rong Yu, Lin Gu, Juncai Dong, Jun Luo, Chen Chen, Qing Peng, Claudia Draxl, Dingsheng Wang, Yadong Li (2018). Carbon nitride supported Fe2 cluster catalysts with superior performance for alkene epoxidation. , 9(1), DOI: https://doi.org/10.1038/s41467-018-04845-x.

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Publication Details

Type

Article

Year

2018

Authors

16

Datasets

0

Total Files

0

Language

en

DOI

https://doi.org/10.1038/s41467-018-04845-x

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