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首页> 外文期刊>Journal of Hydrology >Assimilation of future SWOT-based river elevations, surface extent observations and discharge estimations into uncertain global hydrological models
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Assimilation of future SWOT-based river elevations, surface extent observations and discharge estimations into uncertain global hydrological models

机译:将未来基于 SWOT 的河流高程、地表范围观测和流量估计同化到不确定的全球水文模型中

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Global estimates of river dynamics are needed in order to manage water resources, mainly in developing countries where in-situ observation is limited. Remote sensors such as nadir altimeters can complement ground data. Current altimeters miss however a large number of continental surface water bodies. This issue will be largely resolved by the future Surface Water and Ocean Topography (SWOT) mission, thanks to its wide swath altimeter. SWOT will provide almost globally two-dimensional water elevation maps for rivers over 100 m wide and water bodies over 250 m × 250 m. During this research, we investigated the potential of SWOT to correct hydrological models on a global/continental scale, through data assimilation. For this purpose, an Observing System Simulation Experiment (OSSE), also known as "twin experiment", has been implemented. Model forcings and parameters were perturbed to jointly achieve global hydrological models (GHMs) uncertainties, which is the expected scenario in which the SWOT community will mainly evaluate the future SWOT data. SWOT-like observations of water surface elevation (WSE), flooded water extent (FWE), and/or SWOT derived discharge (Q) were used to correct modelled Q, WSE and FWE from a large-scale hydrological and hydrodynamic model (MGB - portuguese acronym of "Modelo de Grandes Bacias"), using a Ensemble Kalman filter (EnKF). The results indicate that SWOT products could largely improve hydrological simulations on a global and continental scale. SWOT-like discharge can reduce ~40 of model errors in daily discharge. Furthermore, when anomalies of the WSE DA approach were implemented, the error reduction was even greater for all state variables compared to the absolute WSE DA, achieving average error reduction values of about ~30 compared to ~24. Finally, the simultaneous DA of all the SWOT-like variables together reduces errors from ~14 to ~22 compared to the average of assimilating only one variable.
机译:为了管理水资源,需要对河流动态进行全球估计,主要是在实地观测有限的发展中国家。最低点高度计等远程传感器可以补充地面数据。然而,目前的高度计遗漏了大量的大陆地表水体。这个问题将在很大程度上通过未来的地表水和海洋地形(SWOT)任务得到解决,这要归功于其宽幅高度计。SWOT 将为宽度超过 100 m 的河流和超过 250 m × 250 m 的水体提供几乎全球的二维水高程图。在这项研究中,我们研究了 SWOT 通过数据同化在全球/大陆范围内纠正水文模型的潜力。为此,实施了观测系统模拟实验(OSSE),也称为“孪生实验”。模型强迫和参数被扰动,共同实现全球水文模型(GHMs)的不确定性,这是SWOT社区将主要评估未来SWOT数据的预期情景。使用集成卡尔曼滤波 (EnKF) 对水面高程 (WSE)、淹没水范围 (FWE) 和/或 SWOT 衍生流量 (Q) 进行类似 SWOT 的观测,以校正来自大型水文和水动力模型(MGB - “Modelo de Grandes Bacias”的葡萄牙语首字母缩写)的模拟 Q、WSE 和 FWE。结果表明,SWOT产品可以在很大程度上改善全球和大陆尺度的水文模拟。类似 SWOT 的放电可以减少日常放电中 ~40% 的模型误差。此外,当实施 WSE DA 方法的异常时,与绝对 WSE DA 相比,所有状态变量的误差减少幅度更大,实现了约 ~30% 的平均误差减少值,而 ~24%。最后,与仅同化一个变量的平均值相比,所有类似 SWOT 变量的同时 DA 将误差从 ~14% 减少到 ~22%。

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