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Prediction of the removal efficiency of emerging organic contaminants in constructed wetlands based on their physicochemical properties

机译:基于其物理化学性质的构造湿地新兴有机污染物去除效率的预测

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This study investigates the prediction of the removal efficiency of emerging organic contaminants (EOCs) (pharmaceuticals-PhCs, personal care products-PCPs, and steroidal hormones-SHs) in constructed wetlands based on their physicochemical properties (e.g., molecular weight-MW, octanol-water partition coefficient-Log Kow, soil organic carbon sorption coefficient-Log Koc, octanol-water distribution coefficient-Log Dow, and dissociation constant-pKa). The predictive models are formed based on statistical analysis underpinned by principle component, correlation, and regression analyses of a global data set compiled from peer-reviewed publications. The results show that the physicochemical properties of EOCs emerged as good predictors of their removal efficiency. Log Koc, Log Dow, and Log Kow are the most significant predictors, and combination with MW and/or pKa often improved the reliability of the predictions. The best performing model for PhCs was composed of MW, Log Dow, and Log Koc (coefficient of determination-R~2: 0.601; probability value-p < 0.05; root mean square error-RMSE: training set: 11%; test set: 27%). Log Kow and Log Koc for PCPs (R~2: 0.644; p < 0.1; RMSE: training set: 14%; test set: 14%), and a combination of MW, Log Kow, and pKa for SHs (R~2: 0.941; p < 0.1; RMSE: training set: 3%; test set: 15%) formed the plausible models for predicting the removal efficiency. Similarly, reasonably good combined models could be formed in the case of PhCs and SHs or PCPs and SHs, although their individual models were comparatively better. A novel decision support tool, named as REOCW-PCP, was developed to readily estimate the removal efficiency of EOCs, and facilitate the decision-making process.
机译:本研究研究了基于其物理化学特性(例如,分子量 - MW,Octanol的湿地在构造的湿地中预测新出现的有机污染物(EOC)(药物-PHCS,个人护理产品-CPP和甾体护理PCP和甾体系统-CPS)的去除效率的预测水分区系数 - 日志KOW,土壤有机碳吸附系数 - LOG KOC,辛醇 - 水分布系数 - 记录DOW和解离常数PKA)。基于由来自同行评审出版物编译的全球数据集的主要组件,相关性和回归分析,基于统计分析来形成预测模型。结果表明,EoC的物理化学特性出现为其去除效率的良好预测因子。 Log Koc,Log Dow和Log Kow是最重要的预测因子,并且与MW和/或PKA的组合通常改善了预测的可靠性。 PHCS的最佳表现模型由MW,Log Dow和Log Koc组成(确定系数-R〜2:0.601;概率值-P <0.05;根均方误差 - RMSE:培训集:11%;测试集:27%)。 Log Kow和Log Koc for PCP(R〜2:0.644; P <0.1; RMSE:培训集:14%;测试集:14%),以及SHS的MW,log Kow和PKA的组合(R〜2 :0.941; P <0.1; RMSE:培训集:3%;测试集:15%)形成可编合型号,用于预测去除效率。类似地,在PHC和SHS或PCP和SHS的情况下,可以形成合理的合并模型,尽管它们的各个模型相对较好。开发了一种名为Reocw-PCP的新型决策支持工具,以便估计EoC的清除效率,并促进决策过程。

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