Reinholdt Jensen Ditte Marie, Sandoval Santiago, Aubin Jean-Baptiste, Bertrand-Krajewski Jean-Luc, Xuyong Li, Mikkelsen Peter Steen, Vezzaro Luca
Department of Environmental and Resource Engineering, Technical University of Denmark (DTU), Bygningstorvet, Bygning 115, 2800 Kongens Lyngby, Denmark; State Key Laboratory of Urban and Regional Ecology, Research Center for Eco-Environmental Sciences (RCEES), Chinese Academy of Sciences (CAS), 18 Shuangqing Road, Beijing 100085, China; Sino-Danish Center for Education and Research (SDC), Aarhus, Denmark and University of Chinese Academy of Sciences (UCAS), China.
University of Lyon, INSA Lyon, DEEP, EA 7429, F-69621 Villeurbanne cedex, France; University of Applied Sciences and Arts of Western Switzerland (HES-SO), HEIA-Fr, ITEC, Boulevard de Pérolles 80, 1700 Fribourg, Switzerland.
Water Res. 2022 Jun 15;217:118394. doi: 10.1016/j.watres.2022.118394. Epub 2022 Apr 4.
Pollution levels in stormwater vary significantly during rain events, with pollutant flushes carrying a major fraction of an event pollutant load in a short period. Understanding these flushes is thus essential for stormwater management. However, current studies mainly focus on describing the first flush or are limited by predetermined flush categories. This study provides a new perspective on the topic by applying data-driven approaches to categorise Mass Volume (MV) curves for TSS into distinct classes of flush tailored to specific monitoring location. Functional Data Analysis (FDA) was used to investigate the dynamics of MV curves in two large data sets, consisting of 343 measured events and 915 modelled events, respectively. Potential links between classes of MV curves and combinations of rain characteristics were explored through a priori clustering. This yielded correct class assignments for 23-63% of the events using different combinations of MV curve clustering and rainfall characteristics. This suggests that while global rainfall characteristics influence flush, they are not sufficient as sole explanatory variables of different flush phenomena, and additional explanatory variables are needed to assign MV curves into classes with a predictive power that is suitable for e.g. design of stormwater control measures. Our results highlight the great potential of the FDA methodology as a new approach for classifying, describing, and understanding pollutant flush signals in stormwater.
暴雨期间雨水径流中的污染水平变化显著,污染物冲刷在短时间内携带了大部分降雨事件中的污染物负荷。因此,了解这些冲刷对于雨水管理至关重要。然而,目前的研究主要集中在描述首次冲刷,或者受到预先确定的冲刷类别限制。本研究通过应用数据驱动方法,将总悬浮固体(TSS)的质量体积(MV)曲线分类为针对特定监测地点量身定制的不同冲刷类别,为该主题提供了新的视角。功能数据分析(FDA)用于研究两个大型数据集中MV曲线的动态变化,这两个数据集分别包含343个实测事件和915个模拟事件。通过先验聚类探索了MV曲线类别与降雨特征组合之间的潜在联系。使用MV曲线聚类和降雨特征的不同组合,对23%-63%的事件实现了正确的类别分配。这表明,虽然全球降雨特征会影响冲刷,但它们不足以作为不同冲刷现象的唯一解释变量,还需要其他解释变量来将MV曲线分类为具有预测能力的类别,例如用于雨水控制措施的设计。我们的结果突出了FDA方法作为一种对雨水径流中污染物冲刷信号进行分类、描述和理解的新方法的巨大潜力。