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Flood Forecasting and Uncertainty Assessment with Sequential Data Assimilation using a Distributed Hydrologic Model

机译:利用分布式水文模型与顺序数据同化的洪水预测和不确定性评估

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Accurate flood forecasting is essential for mitigating flood damage and addressing operational flood scenarios. In recent years, data assimilation methods have drawn attention due to their potentials to handle explicitly the various sources of uncertainty in hydrologic models. In this study, we implement sequential data assimilation for short-term flood forecasting and parameter uncertainty assessment using grid-based spatially distributed hydrologic models. The lag-time window is introduced to consider the response times of internal hydrologic processes. Results show improvement of flood predictions via particle filtering. For uncertainty assessment, parameters in both radar rainfall estimates and hydrologic models are estimated using kernel smoothing and a lag-time window via particle filtering. Results show that the proposed DA method can be used as a framework to estimate parameters and their predictive uncertainty in an integrative way.
机译:准确的洪水预测对于减轻洪水损害和解决运营洪水情景至关重要。近年来,数据同化方法引起了注意力,因为它们的潜力在水文模型中明确地处理各种不确定性来源。在这项研究中,我们利用基于网格的空间分布的水文模型来实现用于短期洪水预测和参数不确定性评估的顺序数据同化。介绍滞后时间窗口以考虑内部水文过程的响应时间。结果显示通过粒子过滤改善洪水预测。为了不确定评估,估计雷达降雨估计和水文模型中的参数使用粒子平滑估计,通过粒子过滤滞后。结果表明,拟议的DA方法可以用作估计参数的框架及其以综合方式估计参数及其预测性不确定性。

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