论文标题

SAR衍生的洪水观察的同化,以改善河流洪水预测

Assimilation of SAR-derived Flood Observations for Improving Fluvial Flood Forecast

论文作者

Nguyen, Thanh Huy, Ricci, Sophie, Piacentini, Andrea, Fatras, Christophe, Kettig, Peter, Blanchet, Gwendoline, Luque, Santiago Pena, Baillarin, Simon

论文摘要

随着洪水事件的严重程度和发生随着气候变化的增长,对洪水预测能力的需求增加。在这方面,由气候天文台计划资助的洪水检测,警报和快速映射(Flooddam)项目旨在开发专门用于在容易发生洪水领域快速响应的运营前工具,并提高决策支持系统的反应性。这项工作着重于2D洪水范围数据的同化(以湿表面比表示)和原位水位数据,以通过Telemac-2D模型和集合Kalman滤波器(ENKF)改善洪水平原动力学的表示。 ENKF控制矢量组成了摩擦系数和校正参数到输入强迫。然后,它在几个洪泛区域的水位状态下进行增强。这项工作是在观察系统模拟实验(OSSE)的背景下进行的,该实验是基于2021年1月至2月的Garonne Marmandaise集水区进行的。这允许验证与湿表面比观测值以及本工作中实现的双状态参数顺序校正相关的观察算子。在控制参数和1D和2D评估指标的观测空间中,显示了与原位水位观测相互补的辅助洪水平原数据的优点。还表明,液压状态的校正显着改善了洪水动态,尤其是在经济衰退期间。这项概念验证的研究为近实时的洪水预测铺平了道路,从而充分利用了遥感的洪水观察。

As the severity and occurrence of flood events tend to intensify with climate change, the need for flood forecasting capability increases. In this regard, the Flood Detection, Alert and rapid Mapping (FloodDAM) project, funded by Space for Climate Observatory initiatives, was set out to develop pre-operational tools dedicated to enabling quick responses in flood-prone areas, and to improve the reactivity of decision support systems. This work focuses on the assimilation of 2D flood extent data (expressed in terms of wet surface ratios) and in-situ water level data to improve the representation of the flood plain dynamics with a Telemac-2D model and an Ensemble Kalman Filter (EnKF). The EnKF control vector was composed friction coefficients and corrective parameter to the input forcing. It is then augmented with the water level state averaged over several floodplain zones. This work was conducted in the context of Observing System Simulation Experiments (OSSE) based on a real flood event occurred in January-February 2021 on the Garonne Marmandaise catchment. This allows to validate the observation operator associated to the wet surface ratio observations as well as the dual state-parameter sequential correction implemented in this work. The merits of assimilating SAR- derived flood plain data complementary to in-situ water level observations are shown in the control parameter and observation spaces with 1D and 2D assessment metrics. It was also shown that the correction of the hydraulic state significantly improved the flood dynamics, especially during the recession. This proof-of-concept study paves the way towards near-real-time flood forecast, making the most of remote sensing-derived flood observations.

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