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Quantifying uncertainty on sediment loads using bootstrap confidence intervals

机译:使用Bootstrap置信区间量化沉积物负荷的不确定性

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摘要

Load estimates are more informative than constituent concentrations alone, as they allow quantification of on-and off-site impacts of environmental processes concerning pollutants, nutrients and sediment, such as soil fertility loss, reservoir sedimentation and irrigation channel siltation. While statistical models used to predict constituent concentrations have been developed considerably over the last few years, measures of uncertainty on constituent loads are rarely reported. Loads are the product of two predictions, constituent concentration and discharge, integrated over a time period, which does not make it straightforward to produce a standard error or a confidence interval. In this paper, a linear mixed model is used to estimate sediment concentrations. A bootstrap method is then developed that accounts for the uncertainty in the concentration and discharge predictions, allowing temporal correlation in the constituent data, and can be used when data transformations are required. The method was tested for a small watershed in Northwest Vietnam for the period 2010-2011. The results showed that confidence intervals were asymmetric, with the highest uncertainty in the upper limit, and that a load of 6262 Mg year(-1) had a 95% confidence interval of (4331, 12 267) in 2010 and a load of 5543Mg an interval of (3593, 8975) in 2011. Additionally, the approach demonstrated that direct estimates from the data were biased downwards compared to bootstrap median estimates. These results imply that constituent loads predicted from regression-type water quality models could frequently be underestimating sediment yields and their environmental impact.
机译:负载估计比单独的组成浓度更为丰富,因为它们允许定量污染物,营养和沉积物的环境过程的内外影响,例如土壤生育损失,水库沉积和灌溉渠道淤积。在过去几年中,统计模型用于预测成分浓度的显着显着,因此很少报告组成载荷对不确定性的措施。载荷是两种预测,成分浓度和放电的产物,集成在一个时间段内,这不会使其直接产生标准误差或置信区间。在本文中,使用线性混合模型来估算沉积物浓度。然后,将开发引导方法,其占据浓度和放电预测中的不确定性,允许在组成数据中的时间相关,并且可以在需要数据变换时使用。该方法在2010-2011期间在西北越南的一个小流域测试。结果表明,置信区间不对称,上限的最高不确定性,6262毫克(-1)的负荷有95%(4331,12 267)的置信区间(4331,12 267),负荷为5543毫克(3593,8975)在2011年的间隔。此外,与自举中位数估计值相比,该方法证明了数据的直接估计向下偏置。这些结果意味着从回归式水质模型预测的构成载荷可能经常低估沉积物产量及其环境影响。

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