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Method for Probabilistic Flood Forecasting Considering Rainfall and Model Parameter Uncertainties

机译:考虑降雨和模型参数不确定性的概率洪水预报方法

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Hydrologic basin models are generalizations of natural hydrologic processes and inevitably contain multiple uncertainties in the simulation of rainfall-runoff events. These uncertainties typically include input uncertainty, model structure uncertainty, and model parameter uncertainty. The input uncertainty is divided into rainfall calculation uncertainty (RCU) and precipitation forecasting uncertainty. For model parameter uncertainty, there are only a few parameters in a hydrologic basin model that make significant contributions to flood forecasting so that only the probability distribution functions of those sensitive parameters need to be evaluated. In this study, a new method of RCU assessment is derived using an inverse sampling gauge (ISG) approach, in which the influencing factors of the RCU are addressed in the calculated area precipitation and standard deviation. Additionally, the coefficient of variation-Nash-Sutcliffe efficiency measure (CV-NS) method is introduced to identify the sensitive parameters of a hydrologic model. The methods of ISG and CV-NS are tested in Huangnizhuang Basin, China, in the evaluation of the RCU and the parameters uncertainty of the Xinanjiang model. It is indicated that the ISG method is useful in RCU estimation by deriving the conditional probabilistic distribution of areal precipitation, and the CV-NS method is effective and simply in the operation of sensitive parameters' identification. In addition, the continuous ranked probability skill score (CRPSS) is employed as an indicator to show the relative performance of predictions. Three probabilistic predictions considering different sources of uncertainties are conducted and compared with the deterministic prediction. The results of the comparisons suggest that predictions considering one or more uncertainties have higher predictive performance than the deterministic one. Moreover, main source of uncertainty can be identified by the results of CRPSS among different probabilistic predictions. In this study area, the model parameters' uncertainty is the main uncertainty. (C) 2019 American Society of Civil Engineers.
机译:水文流域模型是自然水文过程的概括,在模拟降雨-径流事件时不可避免地包含多个不确定性。这些不确定性通常包括输入不确定性,模型结构不确定性和模型参数不确定性。输入不确定度分为降雨计算不确定度(RCU)和降水预报不确定度。对于模型参数不确定性,水文盆地模型中只有几个参数对洪水预报有重大贡献,因此仅需要评估那些敏感参数的概率分布函数。在这项研究中,使用反向采样规(ISG)方法推导了一种RCU评估的新方法,其中RCU的影响因素在计算的区域降水量和标准差中得到解决。另外,引入变异系数-纳什-萨特克利夫效率测度(CV-NS)方法来识别水文模型的敏感参数。在中国黄内庄盆地对ISG和CV-NS方法进行了测试,以评估RCU和评估新安江模型的参数不确定性。通过推导区域降水的条件概率分布,表明ISG方法在RCU估计中是有用的,而CV-NS方法在敏感参数的识别操作中是有效而简单的。此外,连续排名的概率技能得分(CRPSS)被用作显示预测的相对表现的指标。进行了三种考虑不同不确定性来源的概率预测,并将其与确定性预测进行了比较。比较的结果表明,考虑到一个或多个不确定性的预测比确定性预测具有更高的预测性能。此外,不确定性的主要来源可以通过不同概率预测中的CRPSS结果来确定。在该研究领域中,模型参数的不确定性是主要不确定性。 (C)2019美国土木工程师学会。

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