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Assessing Hydrologic Uncertainty Processor Performance for Flood Forecasting in a Semiurban Watershed

机译:在半城市流域评估洪水预报的水文不确定性处理器性能

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A key challenge in enhancing flood forecast relies in the difficulty of reducing predictive uncertainty. The precipitation-dependent hydrologic uncertainty processor (HUP) is a flexible model independent Bayesian processor that can be used with any hydrologic model to provide probabilistic forecast. This study investigates the use of HUP with different hydrologic models for hydrologic uncertainty quantification in a flood forecasting scheme for a semiurban watershed of southern Ontario, Canada. The purpose is to better understand predictive uncertainty and enhance flood forecasting system reliability in semiurban conditions. HUP is based on Bayes' theorem, and it updates the prior distribution given available information at the forecast time to obtain the posterior distribution that is close to future unknown actual value. In this study, the hydrological model (HYMOD) and the modele du Genie Rural a 4 parametres Horaire (GR4H) were selected to work with HUP, and the Bayesian processor was calibrated using a number of selected flood events from 2005 to 2014. The performance of the processor was assessed by graphical tools and performance metrics, like reliability plots, Nash-Sutcliffe efficiency (NSE), and continuous ranked probability score (CRPS). Results show that HUP provides a robust framework and a reliable analytic-numerical method for the quantification of hydrologic uncertainty, the actual values are well captured by the uncertainty bounds, the CRPS values are relatively small, and reliability curves lie close to the bisector. The comparison between the NSE calculated from the output of the sole deterministic hydrologic model (HYMOD/GR4H) and from the median of the predictive distribution produced by HUP-HYMOD/HUP-GR4H, demonstrates that HUP has the ability to improve the deterministic forecast. For low peak flow events, HUP combining with different hydrologic models presents similar predictive performance, while for high peak flow events, a well performed deterministic model is required in HUP to produce an accurate probabilistic forecast.
机译:增强洪水预报的关键挑战在于降低预报不确定性的难度。与降水有关的水文不确定性处理器(HUP)是一种独立于模型的灵活贝叶斯处理器,可以与任何水文模型一起使用以提供概率预报。这项研究调查了在加拿大安大略省南部一个半城市流域的洪水预报方案中,将HUP与不同的水文模型一起用于水文不确定性量化。目的是更好地理解预测不确定性并增强半城市条件下洪水预报系统的可靠性。 HUP基于贝叶斯定理,在给定的可用信息的情况下,它会在预测时间更新先验分布,以获得接近未来未知实际值的后验分布。在本研究中,选择了水文模型(HYMOD)和Genie Rural a 4参数参数Horaire模型(GR4H)来与HUP一起使用,并使用2005年至2014年的一些选定洪水事件对贝叶斯处理器进行了校准。处理器的性能通过图形工具和性能指标进行评估,例如可靠性图,纳什·苏克利夫效率(NSE)和连续排名概率得分(CRPS)。结果表明,HUP为水文不确定性的量化提供了鲁棒的框架和可靠的解析数值方法,不确定性边界很好地捕获了实际值,CRPS值相对较小,可靠性曲线接近平分线。从唯一确定性水文模型(HYMOD / GR4H)的输出与HUP-HYMOD / HUP-GR4H产生的预测分布的中位数所计算出的NSE之间的比较表明,HUP有能力改善确定性预测。对于低峰流量事件,HUP与不同的水文模型相结合可提供相似的预测性能,而对于高峰流量事件,HUP需要一个性能良好的确定性模型才能产生准确的概率预测。

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