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Predicting Waterborne Escherichia coli Particle Attachment Using Regression Tree Analysis

机译:使用回归树分析预测水性大肠杆菌颗粒附件

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Deterministic watershed models can adequately predict surface water E. coli concentration by incorporating settling and resuspension routines. The partitioning of E. coli between planktonic and particle-associated phases is a sensitive parameter in these models, but is not well understood. This study evaluates land use, hydrological, water quality and particle properties on percent E, coli particle attachment. Sixty water samples were retrieved from four monitoring stations between May and November 2011, capturing four major storm events, and analyzed for bacterial and particulate parameters. Multiple linear regression and regression tree models were built and evaluated for predicting . coli particle attachment in surface water. Percent of E. coli particle attachment ranged between 48.2% and 94.4%, with an average of 67.3%. The regression models revealed that a combination of land use (%forested, %residential), water quality (EC, pH, DO, temperature), particulate (TSS, VSS, %organic fraction, turbidity) and particle size distribution (%sand, %silt, geometric mean diameter, ratio of interquartile particle diameters) properties were significant in predicting E. coli particle attachment. A parsimonious regression tree model that did not contain particle size distribution data was the strongest predictive model, exhibiting a low root mean squared error (13.2) and a high index of agreement (0.92). This study demonstrates the utility of regression tree models for estimating sensitive watershed model parameters.
机译:确定性流域模型可通过将沉淀和再悬浮例程充分预测地表水的大肠杆菌浓度。 E.浮游和颗粒有关相之间大肠杆菌的划分是在这些模型中一个敏感的参数,但还不是很清楚。本研究评估土地使用,水文,水质和第E百分比,大肠杆菌粒子附着的颗粒性能。六水样是从五月至2011年11月之间的四个监测站取回,捕捉四大暴雨事件,并分析细菌和微粒参数。多元线性回归和回归树模型,并评估了预测。大肠杆菌粒子附着在表面的水。大肠杆菌粒子的附着百分比48.2%94.4%之间,平均为67.3%。回归模型显示,土地利用的组合(%森林,%住宅),水质(EC,pH值,溶解氧,温度),微粒(TSS,VSS,%的有机成分,混浊度)和粒度分布(%沙子, %淤泥,几何平均直径,属性的四分位粒径)比分别在预测大肠杆菌粒子的附着显著。一个简约回归树模型不包含颗粒尺寸分布数据是最强的预测模型,表现出低的根均方误差(13.2)和协议的高指数(0.92)。这项研究表明,回归树模型的估计敏感流域模型参数的效用。

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