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The underlying structure of systematic variations in the event mean concentrations

机译:事件平均浓度的系统变化的潜在结构

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Urban runoff pollution can essentially be characterised by fluid quantities and pollutant concentrations. It has been possible to construct models accounting for variations in runoff quantities with some success. However, although several pollutant storage and transport mechanisms have been postulated there still remains substantial unexplained variation in pollutant concentrations. Though a series of well established multivariate pattern recognition techniques the present study has aimed at disclosing the underlying structure of systematic variations in the event mean concentrations (EMC) of pollutants in combined sewers during rainfall. The statistical methods that have been applied to the pollutant concentration variables are factor analysis, cluster analysis, distribution analysis and correlation analysis. The event mean runoff data considered includes eleven pollutant variables originating from five combined sewer catchments in Denmark and in the Netherlands. The combined results of the analyses support earlier findings that EMCs are best described by bimodal or mixture distributions, and further suggest that event based pollutant modelling could be improved through a recognition of these characteristics.
机译:城市径流污染基本上可以通过流体量和污染物浓度来表征。可能已经建立了考虑径流量变化的模型。但是,尽管已经提出了几种污染物的存储和运输机制,但污染物浓度仍然存在无法解释的巨大变化。尽管建立了一系列完善的多元模式识别技术,但本研究旨在揭示降雨期间组合下水道中污染物的事件平均浓度(EMC)的系统变化的潜在结构。应用于污染物浓度变量的统计方法是因子分析,聚类分析,分布分析和相关分析。所考虑的事件平均径流数据包括来自丹麦和荷兰的五个下水道集水区的十一个污染物变量。分析的综合结果支持了先前的发现,即通过双峰或混合物分布可以最好地描述EMC,并进一步表明通过识别这些特征可以改善基于事件的污染物建模。

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