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首页> 外文期刊>Journal of hydrometeorology >Characterization and Space-Time Downscaling of the Inundation Extent over the Inner Niger Delta Using GIEMS and MODIS Data
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Characterization and Space-Time Downscaling of the Inundation Extent over the Inner Niger Delta Using GIEMS and MODIS Data

机译:使用GIEMS和MODIS数据表征尼日尔河内三角洲的淹没范围和时空缩减

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The objective in thiswork is to develop downscalingmethodologies to obtain a long time record of inundation extent at high spatial resolution based on the existing low spatial resolution results of the Global Inundation Extent fromMulti-Satellites (GIEMS) dataset. In semiarid regions, high-spatial-resolution a priori information can be provided by visible and infrared observations fromtheModerate Resolution Imaging Spectroradiometer(MODIS). The study concentrates on the Inner NigerDelta whereMODIS-derived inundation extent has been estimated at a 500-mresolution. The space-time variability is first analyzed using a principal component analysis(PCA). This is particularly effective to understand the inundation variability, interpolate in time, or fill in missing values. Two innovative methods are developed (linear regression and matrix inversion) both based on the PCA representation. These GIEMS downscaling techniques have been calibrated using the 500-mMODIS data. The downscaled fields show the expected space-time behaviors from MODIS. A 20-yr dataset of the inundation extent at 500mis derived fromthis analysis for the Inner NigerDelta. Themethods are very general and may be applied to many basins and to other variables than inundation, provided enough a priori highspatial- resolution information is available. The derived high-spatial-resolution dataset will be used in the framework of the Surface Water Ocean Topography (SWOT) mission to develop and test the instrument simulator as well as to select the calibration validation sites (with high space-time inundation variability). In addition, once SWOT observations are available, the downscaled methodology will be calibrated on them in order to downscale the GIEMS datasets and to extend the SWOT benefits back in time to 1993.
机译:这项工作的目标是根据现有的多卫星全球淹没范围(GIEMS)数据集现有的低空间分辨率结果,开发缩减尺度的方法,以获得高空间分辨率下的淹没程度的长期记录。在半干旱地区,可以通过中分辨率成像光谱仪(MODIS)的可见和红外观测来提供高空间分辨率的先验信息。该研究集中在尼日尔三角洲内,据估计,MODIS引起的淹没程度为500毫秒。首先使用主成分分析(PCA)分析时空变异性。这对于了解淹没变化,及时插值或填写缺失值特别有效。基于PCA表示,开发了两种创新方法(线性回归和矩阵求逆)。这些GIEMS降尺度技术已使用500-mMODIS数据进行了校准。缩小的字段显示了MODIS的预期时空行为。从此分析得出的尼日尔内河三角洲500米淹没范围的20年数据集。该方法非常笼统,可以应用到许多盆地和除淹没以外的其他变量,只要有足够的先验高空间分辨率信息即可。派生的高空间分辨率数据集将在地表水海洋地形(SWOT)任务的框架中使用,以开发和测试仪器模拟器以及选择校准验证站点(时空淹没变异性高)。此外,一旦获得了SWOT观测资料,就将在其上校准缩小的方法,以便缩小GIEMS数据集的规模,并将SWOT的收益追溯到1993年。

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