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Redirecting Configuration of Atomically Dispersed Selenium Catalytic Sites for Efficient Hydrazine Oxidation

MATTER(2024)

Stockholm Univ | Southern Univ Sci & Technol | Xiamen Univ | DESY | Univ Elect Sci & Technol China | Nankai Univ | Donghua Univ

Cited 4|Views28
Abstract
Understanding the reconstruction of surface sites is crucial for gaining insights into the true active sites and catalytic mechanisms. While extensive research has been conducted on reconstruction behaviors of atomically dispersed metallic catalytic sites, limited attention has been paid to non-metallic ones despite their potential catalytic activity comparable or even superior to their noble -metal counterpart. Herein, we report a carbonaceous, atomically dispersed non-metallic selenium catalyst that displayed exceptional catalytic activity in the hydrazine oxidation reaction (HzOR) in alkaline media, outperforming the noble -metal Pt catalysts. In situ X-ray absorption spectroscopy (XAS) and Fourier transform infrared spectroscopy revealed that the pristine SeC4 site pre -adsorbs an *OH ligand, followed by HzOR occurring on the other side of the OH- SeC4. Theoretical calculations proposed that the pre -adsorbed *OH group pulls electrons from the Se site, resulting in a more positively charged Se and a higher polarity of Se-C bonds, thereby enhancing surface reactivity toward HzO/R.
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Key words
surface reconstruction,atomically dispersed non-metallic catalyst,in situ X-ray absorption spectroscopy,fuel cells,hydrazine oxidation reaction
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要点】:本研究报道了一种碳质原子分散的非金属硒催化剂,在碱性介质中进行的肼氧化反应(HzOR)中显示出优于贵金属铂催化剂的催化活性,揭示了非金属催化位点重构的重要性。

方法】:通过原位X射线吸收光谱(XAS)和傅里叶变换红外光谱(FTIR)技术研究了催化剂表面的反应过程,并结合理论计算揭示了催化机理。

实验】:实验使用的数据集名称未明确提及,但研究了硒原子在碳上的分散配置对催化活性的影响,结果表明SeC4位点能够高效催化HzOR,通过理论计算分析了OH基团预吸附对硒位点电子状态的影响。