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首页> 外文期刊>Journal of Hydrology >Assimilation of spatially distributed water levels into a shallow-water flood model. Part I: Mathematical method and test case
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Assimilation of spatially distributed water levels into a shallow-water flood model. Part I: Mathematical method and test case

机译:将空间分布的水位同化为浅水洪水模型。第一部分:数学方法和测试用例

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摘要

Recent applications of remote sensing techniques produce rich spatially distributed observations for flood monitoring. In order to improve numerical flood prediction, we have developed a variational data assimilation method (4D-var) that combines remote sensing data (spatially distributed water levels extracted from spatial images) and a 2D shallow water model. In the present paper (part I), we demonstrate the efficiency of the method with a test case First, we assimilated a single fully observed water level image to identify time-independent parameters (eg. Manning coefficients and initial conditions) and time-dependent parameters (e.g. inflow). Second, we combined incomplete observations (a time series of water elevations at certain points and one partial image). This last configuration was very similar to the real case we analyze in a forthcoming paper (part II) In addition, a temporal strategy with time overlapping is suggested to decrease the amount of memory required for long-duration Simulation.
机译:遥感技术的最新应用为洪水监测提供了丰富的空间分布观测资料。为了改善数值洪水预报,我们开发了一种变体数据同化方法(4D-var),该方法结合了遥感数据(从空间图像中提取的空间分布水位)和2D浅水模型。在本文(第一部分)中,我们通过一个测试案例演示了该方法的有效性。首先,我们将一个完全观测的水位图像同化,以识别与时间无关的参数(例如,配员系数和初始条件)和与时间有关的参数参数(例如流入)。第二,我们结合了不完整的观测结果(在某些点的水位的时间序列和一个局部图像)。最后的配置与我们在即将发表的论文(第二部分)中分析的实际情况非常相似。此外,建议使用具有时间重叠的时间策略来减少长时间仿真所需的内存量。

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