吸附剂
吸附
钴
双酚A
介孔材料
复合数
材料科学
固相萃取
弗伦德利希方程
化学工程
热液循环
检出限
核化学
萃取(化学)
冶金
复合材料
化学
环氧树脂
色谱法
催化作用
有机化学
工程类
作者
Tengwen Zhao,Han Wu,Yang Jin,Xie-Yin Li,Guifu Zuo,Manman Wang
标识
DOI:10.1016/j.jece.2022.108901
摘要
Development of sensitive monitoring method for environmental contaminants is of great interest in both environmental science and analytical chemistry. Here we report the facile hydrothermal fabrication of ordered mesoporous graphitic carbon nitride/cobalt ferrite composite (MCN/CoFe 2 O 4 ) with large surface area and adequate magnetic property. The prepared MCN/CoFe 2 O 4 was developed as an adsorbent for magnetic solid-phase extraction for bisphenols (bisphenol F, bisphenol A and bisphenol AF) prior to HPLC coupled with variable wavelength detector. The factors influencing the extraction procedure, adsorption kinetics, isotherms and thermodynamics were investigated in detail. The extraction performed with 20 mg of MCN/CoFe 2 O 4 sorbent in 15 mL of sample solution was accomplished within only 15 min and gave the enrichment factors of 123.6–154.6. Meanwhile, the adsorption process followed the pseudo-second-order kinetic and Freundlich models. Under the optimized conditions, the method provided the limits of detection ( S/N = 3) and limits of quantification ( S/N = 10) of 0.15–0.25 μg/L and 0.50–0.90 μg/L, and the recoveries of 80.5%−104.0%. Moreover, the adsorbent was stable enough after 16 adsorption-desorption cycles. The developed approach not only presented an alternative strategy for sensitive and rapid determination of bisphenols in environmental water samples, but also promoted the synthesis and application of MCN in the field of sample pretreatment. • MCN/CoFe 2 O 4 composite was firstly fabricated via one-pot facile hydrothermal method. • The sorbent was applied for effective and rapid MSPE of BPs in environmental water. • MSPE was accomplished within 15 min by using 20 mg of sorbent. • The method offered EFs of 123.6–154.6 and provided 16 cycles with RSD less than 10.8%.
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