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A framework for uncertainty and risk analysis in Total Maximum Daily Load applications

机译:总每日最大负荷应用中的不确定性和风险分析框架

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摘要

In the United States, the computation of Total Maximum Daily Loads (TMDL) must include a Margin of Safety (MOS) to account for different sources of uncertainty. In practice however, TMDL studies rarely include an explicit uncertainty analysis and the estimation of the MOS is often subjective and even arbitrary. Such approaches are difficult to replicate and preclude the comparison of results between studies. To overcome these limitations, a Bayesian framework to compute TMDLs and MOSs including an explicit evaluation of uncertainty and risk is proposed in this investigation. The proposed framework uses the concept of Predictive Uncertainty to calculate a TMDL from an equation of allowable risk of noncompliance of a target water quality standard. The framework is illustrated in a synthetic example and in a real TMDL study for nutrients in Sawgrass Lake, Florida. (C) 2017 Elsevier Ltd. All rights reserved.
机译:在美国,总最大日负荷(TMDL)的计算必须包括安全裕度(MOS),以解决各种不确定性来源。然而,实际上,TMDL研究很少包括明确的不确定性分析,而MOS的估算通常是主观的甚至是任意的。这样的方法很难复制,因此很难进行研究之间的比较。为了克服这些局限性,本研究提出了一种贝叶斯框架来计算TMDL和MOS,包括对不确定性和风险的明确评估。拟议的框架使用预测不确定性的概念从目标水质标准不符合的容许风险方程式中计算出TMDL。该框架在一个合成示例中以及在佛罗里达州索格拉斯湖中的营养素真实TMDL研究中得到了说明。 (C)2017 Elsevier Ltd.保留所有权利。

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