Enhanced Adsorption of p-Arsanilic Acid from Water by Amine-Modified UiO-67 as Examined Using Extended X-ray Absorption Fine Structure, X-ray Photoelectron Spectroscopy, and Density Functional Theory Calculations

吸附 密度泛函理论 堆积 化学 氢键 X射线光电子能谱 扩展X射线吸收精细结构 金属有机骨架 胺气处理 吸收(声学) 无机化学 分子 吸收光谱法 化学工程 有机化学 材料科学 计算化学 工程类 物理 复合材料 量子力学
作者
Chen Tian,Jian Zhao,Xinwen Ou,Jieting Wan,Yue‐Peng Cai,Zhang Lin,Zhi Dang,Baoshan Xing
出处
期刊:Environmental Science & Technology [American Chemical Society]
卷期号:52 (6): 3466-3475 被引量:171
标识
DOI:10.1021/acs.est.7b05761
摘要

p-Arsanilic acid (p-ASA) is an emerging organoarsenic pollutant comprising both inorganic and organic moieties. For the efficient removal of p-ASA, adsorbents with high adsorption affinity are urgently needed. Herein, amine-modified UiO-67 (UiO-67-NH2) metal–organic frameworks (MOFs) were synthesized, and their adsorption affinities toward p-ASA were 2 times higher than that of the pristine UiO-67. Extended X-ray absorption fine structure (EXAFS), X-ray photoelectron spectroscopy (XPS), and density functional theory (DFT) calculation results revealed adsorption through a combination of As–O–Zr coordination, hydrogen bonding, and π–π stacking, among which As–O–Zr coordination was the dominant force. Amine groups played a significant role in enhancing the adsorption affinity through strengthening the As–O–Zr coordination and π–π stacking, as well as forming new adsorption sites via hydrogen bonding. UiO-67-NH2s could remove p-ASA at low concentrations (<5 mg L–1) in simulated natural and wastewaters to an arsenic level lower than that of the drinking water standard of World Health Organization (WHO) and the surface water standard of China, respectively. This work provided an emerging and promising method to increase the adsorption affinity of MOFs toward pollutants containing both organic and inorganic moieties, via modifying functional groups based on the pollutant structure to achieve synergistic adsorption effect.

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