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Patterns of remotely sensed floodplain saturation and its use in runoff predictions

机译:遥感洪泛区饱和度模式及其在径流预测中的应用

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摘要

Principal components analysis (PCA) is applied to a time series of European Remote Sensing (ERS) synthetic aperture radar (SAR) scenes of the Alzette River floodplain (Grand-Duchy of Luxembourg). These images cover markedly different hydrological conditions during several winter seasons in order to enable the examination of the decrease of the radar backscattering signal during drying-up phases following important flood events. At the floodplain scale, with homogeneous land use and constant topography, the first principal components (PCs) are mainly dominated by the variance related to the changing areas. The PCs are thus mainly controlled by subsurface and surface water dynamics. The field observations of a densely equipped piezometric network in the floodplain are used to calculate a mean soil saturation index (SSI) continuously. A classification scheme, based on the PCs and k-means algorithm, leads to the segmentation of the floodplain into several hydrological behaviour classes with distinctive responses versus changing moisture conditions. To validate this classification method with ground-based estimations, the relation between the mean backscattering values of microplots within each PCA-derived hydrological class and the water table measurements, expressed by means of the SSI, is evaluated. Results show that each class of microplots is characterized by the slope of the 'backscattering-SSI' function and by the SSI threshold value at which groundwater resurgence appears. The water ponding implies very low signal return due to the specular backscattering effect on the water surface. Based on established relationships between measured initial water table depths, runoff coefficients and rainfall-induced water table rises, these results are used to discuss the potential of SAR-derived information in flood management applications.
机译:主成分分析(PCA)用于阿尔泽特河洪泛区(卢森堡大公国)的欧洲遥感(ERS)合成孔径雷达(SAR)场景的时间序列。这些图像涵盖了几个冬季的明显不同的水文条件,以便能够检查重要洪水事件发生后的干phase阶段期间雷达后向散射信号的减少。在洪泛区范围内,土地使用均匀且地形恒定,第一主要成分(PCs)主要由与变化区域有关的变化所决定。因此,PCs主要受地下和地表水动力学控制。洪泛区中密集装备的测压网络的现场观测被用来连续计算平均土壤饱和度指数(SSI)。基于PCs和k-means算法的分类方案可将洪泛区分割成几个水文行为类别,这些类别的响应随湿度条件的变化而变化。为了用基于地面的估计来验证这种分类方法,评估了每个PCA派生的水文等级内微曲线的平均反向散射值与通过SSI表示的地下水位测量值之间的关系。结果表明,每类微图的特征都是“反向散射-SSI”函数的斜率以及出现地下水回潮的SSI阈值。由于对水表面的镜面反向散射效应,积水意味着信号返回非常低。基于已测量的初始地下水位深度,径流系数和降雨引起的地下水位升高之间的已建立关系,这些结果将用于讨论SAR信息在洪水管理应用中的潜力。

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