Water-oil dual-channels enabled exceptional anti-fouling performances for separation of emulsified oil pollutant

污染物 结垢 废水 乳状液 超亲水性 分离过程 油滴 污水处理 环境科学 废物管理 化学 环境工程 润湿 化学工程 色谱法 工程类 生物化学 有机化学
作者
Yiwen Cui,Yujia Wang,Baicun Hao,Hanzhong Xiao,Xin Huang,Bi Shi
出处
期刊:Journal of Hazardous Materials [Elsevier BV]
卷期号:449: 131012-131012 被引量:23
标识
DOI:10.1016/j.jhazmat.2023.131012
摘要

Oil contamination has been an increasingly concerned environmental issue due to the large quantity of oily wastewater discharged by the industry. The extreme wettability-enabled single-channel separation strategy guarantees efficient separation of oil pollutant from wastewater. However, the ultra-high selective permeability forces the intercepted oil pollutant to form a blocking layer, which weakens the separation capability and slows the kinetics of permeable phase. As a consequence, the single-channel separation strategy fails to maintain a stable flux for a long-term separation process. Herein, we reported a brand-new water-oil dual-channels strategy for accomplishing an ultra-stable long-term separation of emulsified oil pollutant from oil-in-water nano-emulsion by engineering two drastically opposite extreme wettabilities (i.e. superhydrophilicity and superhydrophobicity) to build the water-oil dual-channels. The strategy established the superwetting transport channels to permit water and oil pollutant to permeate through their own channel. In this way, the generation of intercepted oil pollutant was prevented, which guaranteed an exceptional long-lasting (20 h) anti-fouling performance for successful achievement of an ultra-stable separation of oil contamination from oil-in-water nano-emulsion with high flux retention and high separation efficiency. Therefore, our investigations provided a new route for realizing ultra-stable long-term separation of emulsified oil pollutant from wastewater.
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