聚偏氟乙烯
纤维素
膜
化学
氟化物
化学工程
材料科学
核化学
高分子化学
有机化学
无机化学
生物化学
工程类
作者
Junliang Liu,Yixuan Huang,Ganwei Zhang,Qianhui Wang,Shusu Shen,Dapeng Liu,Yaoliang Hong,Ian Wyman
标识
DOI:10.1016/j.jhazmat.2024.134341
摘要
Developing high-efficiency membrane for oil and dye removal is very urgent, because wastewater containing them can cause great damage to human and environment. In this study, a coated membrane was fabricated by applying DAC and PEI onto the commercial PVDF microfiltration membrane for supplying the demand. The coated membrane presents superhydrophlic and superoleophobic properties with a water contact angle of 0o and underwater oil contact angle exceed 150°, as well as excellent low underwater oil adhesion performance. The coated membrane shows high separation efficiency exceeded 99.0% and flux 350.0 L·m-2·h-1 when used for separating for six kinds of oil including pump oil, sunflower oil, n-hexadecane, soybean oil, diesel and kerosene in water emulsions. Additionally, the coated membrane can effectively remove anionic dyes, achieving rejection rates of 94.7%, 93.4%, 92.3%, 90.7% for the CR, MB, RB5, AR66, respectively. More importantly, the membrane was able to simultaneously remove emulsified oil and soluble anionic dyes in wastewater containing both of them. Therefore, this novel coated membrane can be a promising candidate for treating complex wastewater. Both emulsified oil and water-soluble dyes can pose a sustained threat to human health and natural environment. The wastewater containing them are very difficult to treat, because large quantities of emulsified oil droplets are with diameter less than 20 μm and the dyes are only small molecules. This research targeted the removal of emulsified oil and water-soluble dyes in wastewater via membrane technology. When the membrane was fabricated, the environmental strategy was also considered. The natural polymer derivative dialdehyde cellulose (DAC) and water soluble poymer polyethyleneimine (PEI) was used in membrane coating process.
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