Department of Biological System Engineering, Virginia Polytechnic Institute and State University, Seitz Hall, 155 Ag-Quad Ln, Blacksburg, VA, 24060, United States; Hampton Roads Agricultural Research and Extension Center, Virginia Polytechnic and State University, 1444 Diamond Springs Rd, Virginia Beach, VA, 23455, United States.
Department of Biological System Engineering, Virginia Polytechnic Institute and State University, Seitz Hall, 155 Ag-Quad Ln, Blacksburg, VA, 24060, United States.
J Environ Manage. 2022 Sep 1;317:115412. doi: 10.1016/j.jenvman.2022.115412. Epub 2022 May 29.
Estimating pollutant loads from developed watersheds is vitally important to reduce nonpoint source pollution from urban areas, as a key tool in meeting water quality goals is the implementation of Stormwater Control Measures (SCMs). SCMs are selected and sized based on influent pollutant loads. A common method used to estimate pollutant loads in urban runoff is the Event Mean Concentration (EMC) method. In this study, we develop and apply data-driven models using Random Forest (RF), a machine learning approach, to predict Total Nitrogen (TN), Total Phosphorus (TP), Total Suspended Solids (TSS), and Ortho-Phosphorus (Ortho-P) EMCs in urban runoff. The parameters considered in this study were climatological characteristics (i.e., Antecedent Dry Period or ADP, Precipitation Depth or P, Duration or D, and Intensity or I) and catchment characteristics including land use-related parameters including Imperviousness or Imp, Saturated Hydraulic Conductivity or K, and Available Water Capacity or AWC), and site-specific parameters including Slope (S), and Catchment Size (A). Stormwater quality data for this study were obtained from the National Stormwater Quality Database (NSQD), which is the largest repository of stormwater quality data in the U.S. Results demonstrate that land use-related characteristics (i.e., Imp, K, and AWC) were the most effective variables for predicting all EMCs. For TP, TSS, and Ortho-P, site-specific characteristics (S and A) had a greater effect than climatological characteristics (i.e., ADP, P, D, and I). However, for TN, climatological characteristics had a greater effect than site-specific characteristics (S and A). In addition, for TN, TP, and TSS, precipitation characteristics (P, D, and I) were found to be more effective parameters for estimating EMCs than ADP. This study highlights the most influential parameters affecting EMCs which can be used by stakeholders and SCMs designers to improve estimates of nutrients and sediment EMCs. The selection and design of the highest performing SCMs is essential in achieving effective treatment of stormwater, attaining water quality goals, and protecting downstream waterbodies.
估算发达流域的污染物负荷对于减少城市非点源污染至关重要,因为实现水质目标的关键工具是实施雨水控制措施(SCMs)。SCMs 是根据入口污染物负荷来选择和设计的。一种常用的估算城市径流中污染物负荷的方法是事件平均浓度(EMC)法。在本研究中,我们使用机器学习方法随机森林(RF)开发并应用数据驱动模型,以预测城市径流中的总氮(TN)、总磷(TP)、总悬浮固体(TSS)和正磷酸盐(Ortho-P)EMC。本研究考虑的参数包括气候特征(即前期干燥期或 ADP、降水量或 P、持续时间或 D 和强度或 I)和集水区特征,包括不透水相关参数,如不透水率或 Imp、饱和水力传导率或 K 和可用水容量或 AWC),以及特定地点的参数,包括坡度(S)和集水区面积(A)。本研究的雨水水质数据来自美国最大的雨水水质数据库(NSQD)。结果表明,与土地利用相关的特征(即 Imp、K 和 AWC)是预测所有 EMC 的最有效变量。对于 TP、TSS 和 Ortho-P,特定地点的特征(S 和 A)比气候特征(即 ADP、P、D 和 I)的影响更大。然而,对于 TN,气候特征的影响大于特定地点的特征(S 和 A)。此外,对于 TN、TP 和 TSS,降水特征(P、D 和 I)比 ADP 更能有效地估计 EMC。本研究强调了影响 EMC 的最具影响力的参数,利益相关者和 SCMs 设计人员可以利用这些参数来提高营养物和沉积物 EMC 的估算。选择和设计性能最高的 SCMs 对于实现有效的雨水处理、实现水质目标和保护下游水体至关重要。