材料科学
析氧
纳米技术
兴奋剂
阳极
纳米颗粒
电催化剂
非阻塞I/O
掺杂剂
化学工程
催化作用
化学
电极
光电子学
电化学
物理化学
有机化学
工程类
作者
Tongfei Li,Jingwen Yin,Li Yu,Ziqi Tian,Yiwei Zhang,Lin Xu,Yanle Li,Yawen Tang,Huan Pang,Jun Yang
标识
DOI:10.1016/j.jechem.2021.08.035
摘要
The search for non-precious and efficient electrocatalysts towards the oxygen evolution reaction (OER) is of vital importance for the future advancement of multifarious renewable energy conversion/storage technologies. Electronic modulation via heteroatom doping is recognized as one of the most forceful leverages to enhance the electrocatalytic activity. Herein, we demonstrate a delicate strategy for the in-situ confinement of S-doped NiO nanoparticles into N-doped carbon nanotube/nanofiber-coupled hierarchical branched superstructures (labeled as [email protected] NT/NFs). The developed strategy simultaneously combines enhanced thermodynamics via electronic regulation with accelerated kinetics via nanoarchitectonics. The S-doping into NiO lattice and the 1D/1D-integrated hierarchical branched carbon substrate confer the resultant [email protected] NT/NFs with regulated electronic configuration, enriched oxygen vacancies, convenient mass diffusion pathways and superior architectural robustness. Thereby, the [email protected] NT/NFs display outstanding OER properties with an overpotential of 277 mV at 10 mA cm−2 and impressive long-term durability in KOH medium. Density functional theory (DFT) calculations further corroborate that introducing S-dopant significantly enhances the interaction with key oxygenate intermediates and narrow the band gap. More encouragingly, a rechargeable Zn-air battery using an air–cathode of Pt/C + [email protected] NT/NFs exhibits a lower charge voltage and preferable cycling stability in comparison with the commercial Pt/C + RuO2 counterpart. This study highlighting the concurrent consideration of electronic regulation, architectural design and nanocarbon hybridization may shed light on the future exploration of economical and efficient electrocatalysts.
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