Robertson Dale M, Schwarz Gregory E, Saad David A, Alexander Richard B
J Am Water Resour Assoc. 2009 Apr;45(2):534-549. doi: 10.1111/j.1752-1688.2009.00310.x.
Excessive loads of nutrients transported by tributary rivers have been linked to hypoxia in the Gulf of Mexico. Management efforts to reduce the hypoxic zone in the Gulf of Mexico and improve the water quality of rivers and streams could benefit from targeting nutrient reductions toward watersheds with the highest nutrient yields delivered to sensitive downstream waters. One challenge is that most conventional watershed modeling approaches (e.g., mechanistic models) used in these management decisions do not consider uncertainties in the predictions of nutrient yields and their downstream delivery. The increasing use of parameter estimation procedures to statistically estimate model coefficients, however, allows uncertainties in these predictions to be reliably estimated. Here, we use a robust bootstrapping procedure applied to the results of a previous application of the hybrid statistical/mechanistic watershed model SPARROW (Spatially Referenced Regression On Watershed attributes) to develop a statistically reliable method for identifying "high priority" areas for management, based on a probabilistic ranking of delivered nutrient yields from watersheds throughout a basin. The method is designed to be used by managers to prioritize watersheds where additional stream monitoring and evaluations of nutrient-reduction strategies could be undertaken. Our ranking procedure incorporates information on the confidence intervals of model predictions and the corresponding watershed rankings of the delivered nutrient yields. From this quantified uncertainty, we estimate the probability that individual watersheds are among a collection of watersheds that have the highest delivered nutrient yields. We illustrate the application of the procedure to 818 eight-digit Hydrologic Unit Code watersheds in the Mississippi/Atchafalaya River basin by identifying 150 watersheds having the highest delivered nutrient yields to the Gulf of Mexico. Highest delivered yields were from watersheds in the Central Mississippi, Ohio, and Lower Mississippi River basins. With 90% confidence, only a few watersheds can be reliably placed into the highest 150 category; however, many more watersheds can be removed from consideration as not belonging to the highest 150 category. Results from this ranking procedure provide robust information on watershed nutrient yields that can benefit management efforts to reduce nutrient loadings to downstream coastal waters, such as the Gulf of Mexico, or to local receiving streams and reservoirs.
支流输送的过量营养物质与墨西哥湾的缺氧现象有关。减少墨西哥湾缺氧区域并改善河流和溪流水质的管理措施,若能将营养物质减排目标对准那些向敏感下游水域输送营养物质产量最高的流域,可能会有所助益。一个挑战在于,这些管理决策中使用的大多数传统流域建模方法(例如机理模型)并未考虑营养物质产量预测及其向下游输送过程中的不确定性。然而,越来越多地使用参数估计程序来统计估计模型系数,使得能够可靠地估计这些预测中的不确定性。在此,我们将一种稳健的自助法应用于先前应用的混合统计/机理流域模型SPARROW(基于流域属性的空间参考回归)的结果,以开发一种基于流域向整个流域输送营养物质产量的概率排名来确定管理“高优先级”区域的统计可靠方法。该方法旨在供管理人员用于确定流域的优先级,以便对营养物质减排策略进行额外的溪流监测和评估。我们的排名程序纳入了模型预测置信区间以及输送营养物质产量的相应流域排名信息。根据这种量化的不确定性,我们估计单个流域处于具有最高输送营养物质产量的流域集合中的概率。我们通过识别向墨西哥湾输送营养物质产量最高的150个流域,来说明该程序在密西西比河/阿查法拉亚河流域818个八位水文单元代码流域中的应用。最高输送产量来自密西西比河中部、俄亥俄州和密西西比河下游流域的流域。在90%的置信度下,只有少数流域能够可靠地归入最高的150个类别;然而,更多的流域可以被排除在最高的150个类别之外。此排名程序的结果提供了关于流域营养物质产量的可靠信息,这有助于管理工作减少向下游沿海水域(如墨西哥湾)或当地接纳溪流和水库的营养物质负荷。