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Correcting the radar rainfall forcing of a hydrological model with data assimilation: Application to flood forecasting in the Lez catchment in Southern France

机译:通过数据同化校正水文模型的雷达降雨强迫:在法国南部Lez流域的洪水预报中的应用

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The present study explores the application of a data assimilation (DA) procedure to correct the radar rainfall inputs of an event-based, distributed, parsimonious hydrological model. An extended Kalman filter algorithm was built on top of a rainfall-runoff model in order to assimilate discharge observations at the catchment outlet. This work focuses primarily on the uncertainty in the rainfall data and considers this as the principal source of error in the simulated discharges, neglecting simplifications in the hydrological model structure and poor knowledge of catchment physics. The study site is the 114 km~2 Lez catchment near Montpellier, France. This catchment is subject to heavy orographic rainfall and characterised by a karstic geology, leading to flash flooding events. The hydrological model uses a derived version of the SCS method, combined with a Lag and Route transfer function. Because the radar rainfall input to the model depends on geographical features and cloud structures, it is particularly uncertain and results in significant errors in the simulated discharges. This study seeks to demonstrate that a simple DA algorithm is capable of rendering radar rainfall suitable for hydrological forecasting. To test this hypothesis, the DA analysis was applied to estimate a constant hyetograph correction to each of 19 flood events. The analysis was carried in two different modes: by assimilating observations at all available time steps, referred to here as reanalysis mode, and by using only observations up to 3 h before the flood peak to mimic an operational environment, referred to as pseudo-forecast mode. In reanalysis mode, the resulting correction of the radar rainfall data was then compared to the mean field bias (MFB), a corrective coefficient determined using rain gauge measurements. It was shown that the radar rainfall corrected using DA leads to improved discharge simulations and Nash-Sutcliffe efficiency criteria compared to the MFB correction. In pseudo-forecast mode, the reduction of the uncertainty in the rainfall data leads to a reduction of the error in the simulated discharge, but uncertainty from the model parameterisation diminishes data assimilation efficiency. While the DA algorithm used is this study is effective in correcting uncertain radar rainfall, model uncertainty remains an important challenge for flood forecasting within the Lez catchment.
机译:本研究探索数据同化(DA)程序在校正基于事件,分布式,简约水文模型的雷达降雨输入中的应用。在降雨径流模型的基础上建立了扩展的卡尔曼滤波算法,以便吸收集水口的排放观测值。这项工作主要集中在降雨数据的不确定性上,并将其视为模拟流量误差的主要来源,而忽略了水文模型结构的简化和对流域物理知识的了解。研究地点是法国蒙彼利埃附近的114 km〜2 Lez流域。该流域易受地形降雨的影响,并具有岩溶地质特征,导致山洪泛滥。水文模型使用SCS方法的派生版本,并结合了滞后和路径传递函数。由于输入到模型的雷达降雨取决于地理特征和云结构,因此不确定性特别大,并且在模拟流量中会导致重大误差。这项研究试图证明一种简单的DA算法能够使雷达降雨适于水文预报。为了验证这一假设,应用了DA分析来估计19个洪水事件中每个事件的恒定Hyetograph校正。分析以两种不同的模式进行:通过在所有可用时间步上吸收观测值(在此称为重新分析模式),以及仅使用洪峰之前3小时之前的观测值来模拟运行环境,这称为伪预测。模式。在重新分析模式下,将雷达降雨数据的最终校正结果与平均场偏(MFB)进行比较,MFB是使用雨量计测量值确定的校正系数。结果表明,与MFB校正相比,使用DA校正的雷达降雨可改善流量模拟和Nash-Sutcliffe效率标准。在伪预测模式下,降雨数据不确定性的降低会导致模拟流量的误差降低,但是模型参数化的不确定性会降低数据同化效率。尽管本研究使用的DA算法可以有效地纠正不确定的雷达降雨,但是模型不确定性仍然是Lez流域内洪水预报的重要挑战。

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