降级(电信)
微波食品加热
化学
毒死蜱
化学工程
环境化学
杀虫剂
农学
工程类
电气工程
电信
生物
作者
Xiao Shang,Xitao Liu,Wenbo Ren,Jun Huang,Zhou Zhou,Chunye Lin,Mengchang He,Wei Ouyang
标识
DOI:10.1016/j.seppur.2022.122682
摘要
• A special non-thermal effect was created in MW/PDS system. • Different reactive oxygen species were produced in MW/PDS system and MW/PMS system. • MW/PMS system can strongly resist the effect of soil properties on CPF degradation. The combination of microwave (MW) and persulfate (PS, including peroxodisulfate (PDS) and peroxymonosulfate (PMS)) has been proved to be a potential method for degradation of organic pollutant. In this study, the degradation of chlorpyrifos (CPF) in soil by MW/PDS and MW/PMS was investigated. As a result, a synergistic effect was created between MW and PS. Compared with conventional heating (CH) providing thermal effect, MW also played a special non-thermal effect for PDS activation, causing superior CPF degradation by MW/PDS. However, the similar degradation efficiency of CPF in MW/PMS system and CH/PMS system indicated mainly a thermal effect was played by MW in MW/PMS system. The generation of reactive oxygen species (ROS) was explored in detail, SO 4 •− and • OH, generated in water, was the main ROS in MW/PDS system, and 1 O 2 , generated in soil/water interface, was the main ROS in MW/PMS system. 100:1 of PS to CPF molar ratio, 1:1 of water and soil mass ratio were selected as appropriate reaction conditions. Environmental factors including pH and humic acid showed different effects on CPF degradation in MW/PDS system and MW/PMS system. Moreover, the degradation products were different due to different selectivity of ROS, reaction pathways were predicted based on Gaussian calculation and detected products. In addition, toxicity prediction, energy estimation and the applicability in different types of soils were investigated for practical significance of CPF degradation by MW/PS. Therefore, MW/PS provides a promising approach for remediation of CPF-contaminated soils.
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