Precursor-mediated in situ growth of hierarchical N-doped graphene nanofibers confining nickel single atoms for CO 2 electroreduction

石墨烯 材料科学 碳纳米纤维 化学气相沉积 纳米颗粒 化学工程 纳米技术 电化学 碳纤维 纳米纤维 无机化学 碳纳米管 电极 化学 物理化学 复合材料 冶金 工程类 复合数
作者
Huan Wang,Youzeng Li,Maoyu Wang,Shan Chen,Meng Yao,Jialei Chen,Xuelong Liao,Yiwen Zhang,Xuan Lu,Edward Matios,Jianmin Luo,Wei Zhang,Zhenxing Feng,Jichen Dong,Yunqi Liu,Weiyang Li
出处
期刊:Proceedings of the National Academy of Sciences of the United States of America [National Academy of Sciences]
卷期号:120 (14) 被引量:7
标识
DOI:10.1073/pnas.2219043120
摘要

Despite the various strategies for achieving metal-nitrogen-carbon (M-N-C) single-atom catalysts (SACs) with different microenvironments for electrochemical carbon dioxide reduction reaction (CO2RR), the synthesis-structure-performance correlation remains elusive due to the lack of well-controlled synthetic approaches. Here, we employed Ni nanoparticles as starting materials for the direct synthesis of nickel (Ni) SACs in one spot through harvesting the interaction between metallic Ni and N atoms in the precursor during the chemical vapor deposition growth of hierarchical N-doped graphene fibers. By combining with first-principle calculations, we found that the Ni-N configuration is closely correlated to the N contents in the precursor, in which the acetonitrile with a high N/C ratio favors the formation of Ni-N3, while the pyridine with a low N/C ratio is more likely to promote the evolution of Ni-N2. Moreover, we revealed that the presence of N favors the formation of H-terminated edge of sp2 carbon and consequently leads to the formation of graphene fibers consisting of vertically stacked graphene flakes, instead of the traditional growth of carbon nanotubes on Ni nanoparticles. With a high capability in balancing the *COOH formation and *CO desorption, the as-prepared hierarchical N-doped graphene nanofibers with Ni-N3 sites exhibit a superior CO2RR performance compared to that with Ni-N2 and Ni-N4 ones.
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