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首页> 外文期刊>Water resources research >Leveraging Spatial and Temporal Variability to Probabilistically Characterize Nutrient Sources and Export Rates in a Developing Watershed
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Leveraging Spatial and Temporal Variability to Probabilistically Characterize Nutrient Sources and Export Rates in a Developing Watershed

机译:利用时空变化来概率性地描述发育中的流域的营养来源和出口率

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Hybrid watershed models based on nonlinear regression are useful tools for estimating the magnitude of loading rates (i.e., export coefficients) for various pollutant sources within large-scale river basins. Few such models, however, have incorporated temporal variability in either source distributions or climate, despite evidence that precipitation is the primary driver in interannual variability in loading rates. The model developed here includes changes in precipitation, land use, point source discharge, and livestock operations to capture temporal variability in nitrogen loads. Precipitation is incorporated directly in the formulation of export rates using coefficients that vary by source type. Instream and reservoir retention of nitrogen is included to account for nitrogen sinks within the watershed. A Bayesian hierarchical approach is employed to integrate uncertainty in loading estimates, include prior knowledge of parameters, address intrawatershed correlation, and estimate export coefficients probabilistically. We apply this method to three North Carolina river basins that have experienced substantial growth in urban development and livestock operations in the past few decades, and where eutrophication-related water quality problems are common. Accounting for temporal variability constrains uncertainties in nonpoint source export coefficients by nearly 50%, relative to a spatial-only model. Results indicate that livestock operations are a significant contributor of nitrogen throughout much of the study area. Precipitation is shown to have a larger influence on export rates for agricultural than for developed lands, creating a system dominated by agricultural total nitrogen during high precipitation years and by developed (urban) regions during low precipitation years.
机译:基于非线性回归的混合流域模型是有用的工具,可用于估算大型流域内各种污染物源的负荷率(即出口系数)的大小。然而,尽管有证据表明降雨是负荷率年际变化的主要驱动力,但很少有这样的模型在源头分布或气候中纳入了时间变化。这里开发的模型包括降水,土地利用,点源排放和牲畜运行的变化,以捕获氮负荷的时间变化。使用因来源类型而异的系数将降水直接纳入出口率的公式中。包括河流的上游和储层滞留量,以说明流域内的氮汇。使用贝叶斯分层方法将不确定性整合到负荷估算中,包括参数的先验知识,解决流域内相关性以及概率性地估算出口系数。我们将这种方法应用于北卡罗来纳州的三个流域,这些流域在过去几十年中在城市发展和畜牧业中经历了大幅增长,并且富营养化相关的水质问题十分普遍。相对于仅使用空间的模型,考虑到时间变异性,非点源输出系数的不确定性将近50%。结果表明,在整个研究区域中,畜牧业是氮的重要来源。与发达土地相比,降水对农业出口率的影响更大,从而形成了一个系统,该系统在高降水年期间以农业总氮为主,在低降水年期间以发达(城市)地区为主导。

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