期刊
ENVIRONMENTAL SCIENCE & TECHNOLOGY
卷 54, 期 3, 页码 1816-1826出版社
AMER CHEMICAL SOC
DOI: 10.1021/acs.est.9b04669
关键词
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资金
- Natural Science Foundation of China [21906026, 21607026, 21677039]
- National Postdoctoral Program for Innovative Talents [BX20180064]
- China Postdoctoral Science Foundation [2018M640339]
- Professor of Special Appointment (Eastern Scholar) program at the Shanghai Institutions for Higher Learning
Photochemical transformation driven by sunlight is one of the most important natural processes for organic contaminant attenuation. In the current study, statistical analysis-assisted high-resolution mass spectrometry was employed to investigate the phototransformation of nontarget features in wastewater effluents under various radical quenching/enhancing conditions. A total of 9694 nontarget features were extracted from the effluents, including photoresistant features, photolabile features, and transformation products. 65% of the wastewater effluent features were photoresistant, and the photolabile features could be classified into five groups: direct photolysis group (group I), HO center dot-originated species-dominated group (group II), 3OM*-dominated group (group III), photochemically produced reactive intermediates combination-dominated group (group IV), and non-first-order degradation group (group V). The direct photolyzed features were observed to degrade significantly faster than the indirect photolyzed features. Moreover, group II dominated by HO center dot-originated species contributed 34% to the photolabile features. The reaction types that occurred in the phototransformation process were analyzed by linkage analysis. The results suggested that oxygen addition and dealkyl group reactions were the most common reaction types identified in the phototransformation process. Overall, high-resolution mass spectrometry coupled with statistical analysis was applied here to understand the photochemical behavior of the unknown features in wastewater effluents.
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