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Generation of synthetic influent data to perform (micro)pollutant wastewater treatment modelling studies

机译:生成合成影响数据,执行(微)污染物废水处理建模研究

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摘要

The use of process models to simulate the fate of micropollutants in wastewater treatment plants is constantly growing. However, due to the high workload and cost of measuring campaigns, many simulation studies lack sufficiently long time series representing realistic wastewater influent dynamics. In this paper, the feasibility of the Benchmark Simulation Model No. 2 (BSM2) influent generator is tested to create realistic dynamic influent (micro)pollutant disturbance scenarios. The presented set of models is adjusted to describe the occurrence of three pharmaceutical compounds and one of each of its metabolites with samples taken every 2-4h: the anti-inflammatory drug ibuprofen (IBU), the antibiotic sulfamethoxazole (SMX) and the psychoactive carbamazepine (CMZ). Information about type of excretion and total consumption rates forms the basis for creating the data-defined profiles used to generate the dynamic time series. In addition, the traditional influent characteristics such as flow rate, ammonium, particulate chemical oxygen demand and temperature are also modelled using the same framework with high frequency data. The calibration is performed semi-automatically with two different methods depending on data availability. The 'traditional' variables are calibrated with the Bootstrap method while the pharmaceutical loads are estimated with a least squares approach. The simulation results demonstrate that the BSM2 influent generator can describe the dynamics of both traditional variables and pharmaceuticals. Lastly, the study is complemented with: 1) the generation of longer time series for IBU following the same catchment principles; 2) the study of the impact of in-sewer SMX biotransformation when estimating the average daily load; and, 3) a critical discussion of the results, and the future opportunities of the presented approach balancing model structure/calibration procedure complexity versus predictive capabilities.
机译:使用过程模型来模拟废水处理厂中微污染物的命运不断增长。然而,由于衡量活动的高工作量和成本,许多仿真研究缺乏足够长的时间序列代表现实的废水进水动态。本文检测了基准模拟模型No.2(BSM2)进水发生器的可行性,以创造现实的动态流入(微)污染物干扰情景。调整呈现的一组模型,以描述每2-4h中采集的样品的三种药物化合物和其中一个代谢物:抗炎药布洛芬(IBU),抗生素磺胺甲恶唑(SMX)和精神活性尸毒嘧啶(CMZ)。有关排泄类型和总消耗率的信息构成了创建用于生成动态时间序列的数据定义配置文件的基础。此外,还使用具有高频数据的相同框架的相同框架建模的传统流动性的流动性特性如流速,铵,颗粒化学氧需氧量和温度。根据数据可用性,使用两种不同的方法自动进行校准。 “传统”变量用自靴方式校准,同时用最小二乘法估计药物载荷。模拟结果表明,BSM2流入发生器可以描述传统变量和药物的动态。最后,该研究补充说:1)在相同的集水原则之后,IBU的较长时间序列的产生; 2)估计平均日载时,下水道SMX生物转化的影响研究; 3)对结果的关键讨论,以及所提出的方法平衡模型结构/校准程序复杂性的未来机遇与预测功能。

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