污水处理
废水
超滤(肾)
污染
流出物
微滤
化学
环境化学
纳滤
污水
环境科学
过滤(数学)
制浆造纸工业
环境工程
色谱法
膜
生态学
生物化学
统计
数学
工程类
生物
作者
Olga S. Arvaniti,Marilena E. Dasenaki,Alexandros G. Asimakopoulos,Niki C. Maragou,Vasilios G. Samaras,K. Antoniou,Georgia Gatidou,Daniel Mamais,Constantinos Noutsopoulos,Zacharias Frontistis,Νikolaos S. Τhomaidis,Athanasios S. Stasinakis
标识
DOI:10.1007/s11783-022-1583-y
摘要
In this work, 38 different organic emerging contaminants (ECs), belonging to various chemical classes such as pharmaceuticals (PhCs), endocrine-disrupting chemicals (EDCs), benzotriazoles (BTRs), benzothiazoles (BTHs), and perfluorinated compounds (PFCs), were initially identified and quantified in the biologically treated wastewater collected from Athens’ (Greece) Sewage Treatment Plant (STP). Processes already used in existing STPs such as microfiltration (MF), nanofiltration (NF), ultrafiltration (UF), UV radiation, and powdered activated carbon (PAC) were assessed for ECs’ removal, under the conditions that represent their actual application for disinfection or advanced wastewater treatment. The results indicated that MF removed only one out of the 38 ECs and hence it was selected as pretreatment step for the other processes. UV radiation in the studied conditions showed low to moderate removal for 5 out of the 38 ECs. NF showed better results than UF due to the smaller pore sizes of the filtration system. However, this enhancement was observed mainly for 8 compounds originating from the classes of PhCs and PFCs, while the removal of EDCs was not statistically significant. Among the various studied technologies, PAC stands out due to its capability to sufficiently remove most ECs. In particular, removal rates higher than 70% were observed for 9 compounds, 22 were partially removed, while 7 demonstrated low removal rates. Based on our screening experiments, future research should focus on scaling-up PAC in actual conditions, combining PAC with other processes, and conduct a complete economic and environmental assessment of the treatment.
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