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首页> 外文期刊>Applied Ocean Research >Uncertainty analysis of estuarine hydrodynamic models: an evaluation of input data uncertainty in the weeks bay estuary, alabama
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Uncertainty analysis of estuarine hydrodynamic models: an evaluation of input data uncertainty in the weeks bay estuary, alabama

机译:河口水动力模型的不确定性分析:在阿拉巴马州周湾河口的输入数据不确定性评估

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摘要

Uncertainty analyses are necessary to identify, evaluate, and report the main sources of errors in modeling studies and their impacts on the model predictions. Although uncertainty analysis has been a subject of increased interest by the water resources community during the last couple of decades, in estuarine hydrodynamic modeling this is an emerging topic that requires more research. Some of the most relevant problems remaining in the practice include the identification of the principal sources of errors affecting the model predictions, and the identification of effective and computationally feasible methodologies for their quantification. This investigation evaluates the impacts of input data errors on the predictions of a 3D hydrodynamic model of the Weeks Bay estuary, Alabama. The uncertainty analysis is performed using the First Order Variance Analysis (FOVA) and the results compared to a standard Monte Carlo Uncertainty Analysis (MCUA). A procedure to implement a skill assessment as a fundamental component of the FOVA method is presented. The uncertainty analyses are performed temporally as well as spatially distributed over the model domain. The results indicate that the uncertainty in a prognostic variable is not homogeneously distributed over the computational domain, and that there are areas prone to a higher or lower uncertainty. The identification of these areas is relevant for the design of data collection plans intended to improve the confidence in the model results. The comparison of the methods indicates that both are effective to provide uncertainty estimates, although FOVA tends to overestimate the predictions obtained by MCUA. in general this overestimation can be considered as a conservative estimation of the uncertainty given the existence of other sources of errors more complex to evaluate.
机译:不确定性分析对于识别,评估和报告建模研究中的主要错误来源及其对模型预测的影响是必要的。尽管不确定性分析已成为最近二十年来水资源界越来越感兴趣的话题,但在河口水动力模型中,这是一个新兴的话题,需要更多的研究。在实践中仍然存在一些最相关的问题,包括确定影响模型预测的主要误差源,以及确定有效的和在计算上可行的量化方法。这项研究评估了输入数据错误对阿拉巴马州Weeks Bay河口3D水动力模型预测的影响。使用一阶方差分析(FOVA)进行不确定性分析,并将结果与​​标准蒙特卡洛不确定性分析(MCUA)进行比较。提出了将技能评估作为FOVA方法的基本组成部分的过程。不确定性分析在模型域上进行了时间上和空间上的分布。结果表明,预后变量中的不确定性在计算域中分布不均匀,并且存在容易出现较高或较低不确定性的区域。这些区域的识别与旨在提高对模型结果的置信度的数据收集计划的设计有关。方法的比较表明,尽管FOVA往往高估了MCUA获得的预测,但两种方法都可以有效地提供不确定性估计。通常,考虑到存在其他更难以评估的误差源,这种高估可以被认为是不确定性的保守估计。

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