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Empirical regression models for estimating nitrogen removal in a stormwater wetland during dry and wet days

机译:估算干旱和潮湿天雨水湿地中氮去除率的经验回归模型

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Due to the highly variable hydrologic quantity and quality of stormwater runoff, which requires more complex models for proper prediction of treatment, a relatively few and site-specific models for stormwater wetlands have been developed. In this study, regression models based on extensive operational data and wastewater wetlands were adapted to a stormwater wetland receiving both base flow and storm flow from an agricultural area. The models were calibrated in Excel Solver using 15 sets of operational data gathered from random sampling during dry days. The calibrated models were then applied to 20 sets of event mean concentration data from composite sampling during 20 independent rainfall events. For dry days, the models estimated effluent concentrations of nitrogen species that were close to the measured values. However, overestimations during wet days were made for NH3-N and total Kjeldahl nitrogen, which resulted from higher hydraulic loading rates and influent nitrogen concentrations during storm flows. The results showed that biological nitrification and denitrification was the major nitrogen removal mechanism during dry days. Meanwhile, during wet days, the prevailing aerobic conditions decreased the denitrification capacity of the wetland, and sedimentation of particulate organic nitrogen and particle-associated forms of nitrogen was increased.
机译:由于雨水径流的水文数量和质量变化很大,需要更复杂的模型来正确预测处理方法,因此已经开发了相对较少且针对特定地点的雨水湿地模型。在这项研究中,基于广泛的运行数据和废水湿地的回归模型适用于接受来自农业地区的基础流量和暴雨流量的雨水湿地。在Excel Solver中使用从干旱期间的随机采样收集的15组操作数据校准了模型。然后将校准后的模型应用于来自20个独立降雨事件的复合采样的20组事件平均浓度数据。对于干燥的日子,模型估算出的氮素排放浓度接近测量值。但是,在雨天对NH3-N和凯氏氮总量进行了高估,这是由于较高的水力负荷率和暴风雨期间进水氮浓度造成的。结果表明,生物硝化和反硝化是干旱时期的主要脱氮机理。同时,在潮湿的日子里,普遍的有氧条件降低了湿地的反硝化能力,并且增加了颗粒有机氮和颗粒相关氮的沉降。

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