光催化
催化作用
氮化碳
石墨氮化碳
材料科学
化学工程
氢
分解水
碳纤维
人工光合作用
光化学
纳米技术
化学
有机化学
复合材料
复合数
工程类
作者
Fanglei Yao,Liming Dai,Jiabao Bi,Wenkang Xue,Jingyao Deng,Chenchen Fang,Litong Zhang,Hongan Zhao,Wenyao Zhang,Pan Xiong,Yongsheng Fu,Jingwen Sun,Junwu Zhu
标识
DOI:10.1016/j.cej.2022.136430
摘要
• A loofah-like carbon nitride sponge(LCN) is successfully synthesized. • The LCN features 3D hierarchical porous structure and ultrathin thickness. • Oxygen doping and nitrogen vacancies engineering are simultaneously constructed. • The LCN shows excellent photocatalytic activity and stability. • The mechanism of transfer hydrogenation with water as hydrogen source is revealed. The vigorous development of photocatalytic water splitting technology has laid the foundation for the photocatalytic transfer hydrogenation of organic substrates to produce the high value-added chemicals using water as hydrogen source. Nevertheless, the high dissociation energy of the O–H bond impedes its academic progress and the practical applications. Herein, we synthesize a 3D hierarchical porous loofah-like carbon nitride sponge (LCN) with ultrathin thickness via the supramolecular pre-organization coupling with the oxidation etching process, in which the heterogeneous oxygen atoms and the nitrogen vacancies are in-situ engineered. On top of the adorable photocatalytic H 2 evolution (4812 μmol h −1 g −1 ), LCN associated with Pt cocatalyst reveals a conversion rate of 96.5 % towards the hydrogenation of 4-nitrophenol, substantially superior to the reference experiment (8.3 %). Further based on the isotope-labeling tests and the density functional theory calculations, the photo-generated H 0 from water is clarified to be the direct reducing agent, tactfully skipping the hydrogen extraction step in the traditional path. This work provides a green and sustainable methodology to transfer the solar energy to the valuable fine chemicals, as well as highlights the importance of the 3D hierarchical porous structure to the catalytic activity.
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