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A neighborhood statistics model for predicting stream pathogen indicator levels

机译:预测河流病原体指标水平的邻域统计模型

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Because elevated levels of water-borne Escherichia coli in streams are a leading cause of water quality impairments in the U.S., water-quality managers need tools for predicting aqueous E. coli levels. Presently, E. coli levels may be predicted using complex mechanistic models that have a high degree of unchecked uncertainty or simpler statistical models. To assess spatio-temporal patterns of instream E. coli levels, herein we measured E. coli, a pathogen indicator, at 16 sites (at four different times) within the Squaw Creek watershed, Iowa, and subsequently, the Markov Random Field model was exploited to develop a neighborhood statistics model for predicting instream E. coli levels. Two observed covariates, local water temperature (degrees Celsius) and mean cross-sectional depth meters), were used as inputs to the model. Predictions of E. coli levels in the water column were compared with independent observational data collected from 16 in-stream locations. The results revealed that spatiotemporal averages of predicted and observed E. coli levels were extremely close. Approximately 66 % of individual predicted E. coli concentrations were within a factor of 2 of the observed values. In only one event, the difference between prediction and observation was beyond one order of magnitude. The mean of all predicted values at 16 locations was approximately 1% higher than the mean of the observed values. The approach presented here will be useful while assessing instream contaminations such as pathogen/pathogen indicator levels at the watershed scale.
机译:由于美国溪流中水基大肠杆菌的水平升高是导致水质受损的主要原因,因此水质管理人员需要用于预测含水大肠杆菌水平的工具。当前,可使用具有高度未检验不确定性的复杂机理模型或更简单的统计模型来预测大肠杆菌水平。为了评估上游大肠杆菌水平的时空模式,在此我们在爱荷华州Squaw Creek流域内的16个站点(四个不同时间)测量了一种病原体指标大肠杆菌,随后采用了马尔可夫随机场模型开发了一种邻域统计模型以预测大肠杆菌流入量。两个观察到的协变量,即局部水温(摄氏度)和平均横截面深度计)被用作模型的输入。将水柱中大肠杆菌水平的预测值与从16个进水口位置收集的独立观测数据进行比较。结果表明,预测和观察到的大肠杆菌水平的时空平均值非常接近。个别预测的大肠杆菌浓度中约有66%在观察值的2倍之内。仅在一次事件中,预测和观察之间的差异超出了一个数量级。 16个位置的所有预测值的平均值比观察值的平均值高约1%。这里介绍的方法在评估河流污染(例如分水岭规模的病原体/病原体指标水平)时将很有用。

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