计时安培法
化学
循环伏安法
安培法
铜
电化学
电极
无机化学
扩散
分析化学(期刊)
物理化学
有机化学
物理
热力学
作者
Pedro H. S. Borges,Laiz C.D. Narciso,Guilherme Fernandes de Souza Miguel,Guedmiller Souza de Oliveira,Moacyr Comar,Antônio Eduardo da Hora Machado,Rodrigo A.A. Muñoz,Edson Nossol
标识
DOI:10.1016/j.electacta.2023.142018
摘要
This work evaluates the electrocatalytic oxidation of hydrazine (HDZ) by silver (AgHCF) and copper (CuHCF) hexacyanoferrates-modified glassy carbon electrodes kinetically and analytically through experimental electrochemistry and theoretical approaches. The materials were prepared by a two-step cyclic voltammetry (CV) routes and had their structural and morphological attributes attested by microscopic and spectroscopic characterization techniques. The AgHCF and CuHCF-modified electrodes showed quasi-reversible characteristics driven by K+ diffusion and adsorption processes, respectively. The kinetic properties of the materials towards HDZ electrooxidation were evaluated through CV and chronoamperometry techniques. The analyte exhibited irreversible electron transfer controlled by semi-infinite diffusion process for both Prussian blue analogs. The CuHCF-modified electrode showed superior diffusion coefficient (D = 2.17×10−5 cm2 s−1) and catalytic rate constant (kcat = 1.75×103 L mol−1 s−1) comparing to the silver analog (D = 2.31×10−6 cm2 s−1 and kcat = 8.06×102 L mol−1 s−1). The copper-based material also exhibited higher sensitivity (S) obtained through CV (S = 42 nA L µmol L−1) and batch injection analysis-coupled amperometry (BIA/amp) (S = 66.8 nA L µmol L−1) measurements, in comparison to AgHCF-modified electrode (S = 25 nA L µmol L−1 – CV; S = 22.3 nA L µmol L−1 – BIA/amp). Theoretical approaches showed that CuHCF material required lower energy (ΔEgap = 0.0397 eV) to promote an electron to the lowest unoccupied molecular orbital due to its cubic structural arrangement, justifying the better electrocatalytic results comparing to the hexagonal structure of the AgHCF material (ΔEgap = 0.0840 eV).
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