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Application of the SPARROW model in watersheds with limited information: a Bayesian assessment of the model uncertainty and the value of additional monitoring

机译:SPARROW模型在信息有限的流域中的应用:模型不确定性的贝叶斯评估和附加监测的价值

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How can spatially explicit nonlinear regression modelling be used for obtaining nonpoint source loading estimates in watersheds with limited information? What is the value of additional monitoring and where should future data-collection efforts focus on? In this study, we address two frequently asked questions in watershed modelling by implementing Bayesian inference techniques to parameterize SPAtially Referenced Regressions On Watershed attributes (SPARROW), a model that empirically estimates the relation between in-stream measurements of nutrient fluxes and the sources/sinks of nutrients within the watershed. Our case study is the Hamilton Harbour watershed, a mixed agricultural and urban residential area located at the western end of Lake Ontario, Canada. The proposed Bayesian approach explicitly accounts for the uncertainty associated with the existing knowledge from the system and the different types of spatial correlation typically underlying the parameter estimation of watershed models. Informative prior parameter distributions were formulated to overcome the problem of inadequate data quantity and quality, whereas the potential bias introduced from the pertinent assumptions is subsequently examined by quantifying the relative change of the posterior parameter patterns. Our modelling exercise offers the first estimates of export coefficients and delivery rates from the different subcatchments and thus generates testable hypotheses regarding the nutrient export ‘hot spots’ in the studied watershed. Despite substantial uncertainties characterizing our calibration dataset, ranging from 17% to nearly 400%, we arrived at an uncertainty level for the whole-basin nutrient export estimates of only 36%. Finally, we conduct modelling experiments that evaluate the potential improvement of the model parameter estimates and the decrease of the predictive uncertainty if the uncertainty associated with the current nutrient loading estimates is reduced. Copyright © 2012 John Wiley & Sons, Ltd.
机译:在信息有限的流域中,如何使用空间显式非线性回归建模来获取非点源负荷估算?附加监视的价值是什么?未来的数据收集工作应重点放在哪里?在这项研究中,我们通过实施贝叶斯推理技术以参数化流域属性的空间参考回归(SPARROW)来解决流域建模中的两个常见问题,该模型可凭经验估算养分通量的测量值与源/汇之间的关系。流域内的营养物质。我们的案例研究是汉密尔顿港流域,这是一个位于加拿大安大略湖西端的农业和城市混合居住区。提出的贝叶斯方法明确考虑了与系统现有知识相关的不确定性以及分水岭模型参数估算通常所依据的不同类型的空间相关性。制定了内容丰富的先验参数分布以克服数据量和质量不足的问题,而随后通过量化后验参数模式的相对变化来检查从相关假设引入的潜在偏差。我们的建模工作提供了来自不同子汇水面积的出口系数和输送速率的第一个估计值,从而生成了关于研究流域中养分出口“热点”的可检验假设。尽管我们的校准数据集存在很大的不确定性,范围从17%到近400%,但对于整个流域营养物出口估计值,我们仍达到了36%的不确定性水平。最后,我们进行建模实验,以评估模型参数估算值的潜在改进以及如果与当前营养物负荷估算值相关的不确定性降低的预测不确定性的降低。版权所有©2012 John Wiley&Sons,Ltd.

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