Department of Environmental Science, Institute for Water and Wetland Research, Radboud University Nijmegen, P.O. Box 9010, 6500 GL, Nijmegen, The Netherlands.
Environ Sci Process Impacts. 2018 Jan 24;20(1):171-182. doi: 10.1039/c7em00493a.
Large variations in removal efficiencies (REs) of chemicals have been reported for monitoring studies of activated sludge wastewater treatment plants (WWTPs). In this work, we conducted a meta-analysis on REs (1539 data points) for a set of 209 chemicals consisting of fragrances, surfactants, and pharmaceuticals in order to assess the drivers of the variability relating to inherent properties of the chemicals and operational parameters of activated sludge WWTPs. For a reduced dataset (n = 542), we developed a mixed-effect model (meta-regression) to explore the observed variability in REs for the chemicals using three chemical specific factors and four WWTP-related parameters. The overall removal efficiency of the set of chemicals was 82.1% (95% CI 75.2-87.1%, N = 1539). Our model accounted for 17% of the total variability in REs, while the process-based model SimpleTreat did not perform better than the average of the measured REs. We identified that, after accounting for other factors potentially influencing RE, readily biodegradable compounds were better removed than non-readily biodegradable ones. Further, we showed that REs increased with increasing sludge retention times (SRTs), especially for non-readily biodegradable compounds. Finally, our model highlighted a decrease in RE with increasing K. The counterintuitive relationship to K stresses the need for a better understanding of electrochemical interactions influencing the RE of ionisable chemicals. In addition, we highlighted the need to improve the modelling of chemicals that undergo deconjugation when predicting RE. Our meta-analysis represents a first step in better explaining the observed variability in measured REs of chemicals. It can be of particular help to prioritize the improvements required in existing process-based models to predict removal efficiencies of chemicals in WWTPs.
大型变化的去除效率(REs)的化学物质已经报道了监测研究的活性污泥污水处理厂(WWTPs)。在这项工作中,我们进行了荟萃分析REs(1539 个数据点)的一组 209 化学物质组成的香水,表面活性剂和药品,以评估与化学物质的固有性质和活性污泥 WWTPs 的操作参数有关的变异性的驱动因素。对于一个减少数据集(n = 542),我们开发了一个混合效应模型(荟萃回归)来探索观察到的化学物质的可变性REs 使用三个化学特定因素和四个 WWTP 相关参数。一套化学品的总体去除效率为 82.1%(95%置信区间 75.2-87.1%,n = 1539)。我们的模型解释了 REs 总变异性的 17%,而基于过程的模型 SimpleTreat 并不比测量的 REs 的平均值表现得更好。我们确定,在考虑到其他可能影响 RE 的因素后,易生物降解的化合物比不易生物降解的化合物更容易被去除。此外,我们表明,REs 随污泥停留时间(SRT)的增加而增加,特别是对于不易生物降解的化合物。最后,我们的模型突出了 RE 随 K 的增加而降低。与 K 的反直觉关系强调了需要更好地理解影响可电离化学品 RE 的电化学相互作用。此外,我们强调了在预测 RE 时需要改进对经历去共轭作用的化学品的建模。我们的荟萃分析代表了更好地解释化学物质测量的 RE 观察到的变异性的第一步。它可以特别有助于优先改进现有的基于过程的模型,以预测 WWTPs 中化学物质的去除效率。