光催化
X射线光电子能谱
锐钛矿
材料科学
纳米材料
高分辨率透射电子显微镜
核化学
物理吸附
分析化学(期刊)
化学工程
吸附
纳米技术
化学
透射电子显微镜
催化作用
物理化学
环境化学
工程类
生物化学
作者
Isaías Limón-Rocha,Adriana Marizcal-Barba,Carlos Alberto Guzmán González,Luis Miguel Anaya‐Esparza,Suresh Ghotekar,O.A. González Vargas,Alejandro Pérez-Larios
出处
期刊:Inorganics (Basel)
[Multidisciplinary Digital Publishing Institute]
日期:2022-09-27
卷期号:10 (10): 157-157
被引量:17
标识
DOI:10.3390/inorganics10100157
摘要
Pure TiO2 synthesized by the sol-gel method and subsequently deposited at 5% by weight with Co, Cu, Fe, and Ni ions by the deposition–precipitation method was studied as photocatalysts. The nanomaterials were analyzed by SEM, TEM, UV-Vis DRS, DRX, Physisorption N2, and XPS. The SEM and TEM images present a semi-spherical shape with small agglomerations of particles and average size between 63 and 65 nm. UV-Vis results show that a reduction below 3.2 eV exhibits a redshift displacement and increment in the optical absorption of the nanoparticles promoting the absorption in the UV-visible region. XRD spectra and analysis SAED suggest the characteristic anatase phase in TiO2 and deposited materials according to JCPDS 21-1272. The specific surface area was calculated and the nanomaterial Ni/TiO2 (21.3 m2 g−1) presents a slight increment when comparing to TiO2 (20.37 m2g−1). The information generated by the XPS spectra present the deposition of metallic ions on the support and the presence of different valence states for each photocatalyst. The photocatalytic activity was carried out in an aqueous solution with 80 mg L−1 of 2,4-D or 2,4-DCP under UV light (285 nm) with 100 mg L−1 of each photocatalysts for 360 min. The nanomaterial that presented the best efficiency was Ni/TiO2, obtaining a degradation of 85.6% and 90.3% for 2,4-D and 2,4-DCP, respectively. Similarly, this material was the one that presented the highest mineralization, 68.3% and 86.5% for 2,4-D and 2,4-DCP, respectively. Photocatalytic reactions correspond to the pseudo-first-order Langmuir–Hinshelwood model.
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