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A statistical spatial downscaling algorithm of TRMM precipitation based on NDVI and DEM in the Qaidam Basin of China

机译:基于NDVI和DEM的柴达木盆地TRMM降水统计空间缩减算法。

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The availability of precipitation data with high spatial resolution is of fundamental importance in several applications such as hydrology, meteorology and ecology. At present, there are mainly two sources of precipitation estimates: raingauge stations and remote sensing technology. However, a large number of studies demonstrated that traditional point measurements based on raingauge stations cannot reflect the spatial variation of precipitation effectively, especially in ungauged basins. The technology of remote sensing has greatly improved the quality of precipitation observations and produced reasonably high resolution gridded precipitation fields. These products, derived from satellites, have been widely used in various parts of the world. However, when applied to local basins and regions, the spatial resolution of these products is too coarse. In this paper, we present a statistical downscaling algorithm based on the relationships between precipitation and other environmental factors in the Qaidam Basin such as topography and vegetation, which was developed for downscaling the spatial precipitation fields of these remote sensing products. This algorithm is demonstrated with the Tropical Rainfall Measuring Mission (TRMM) 3B43 dataset, the Digital Elevation Model (DEM) from the Shuttle Radar Topography Mission (SRTM) and SPOT VEGETATION. The statistical relationship among precipitation, DEM and Normalized Difference Vegetation Index (NDVI), which is a proxy for vegetation, is variable at different scales; therefore, a multiple linear regression model was established under four different scales (0.25°, 0.50°, 0.75° and 1.00°, respectively). By applying a downscaling methodology, TRMM 3B43 0.25°×0.25° precipitation fields were downscaled to 1×1km pixel precipitation for each year from 1999 to 2009. On the basis of three criteria, these four downscaled results were compared with each other and the regression model established at the resolution of 0.50° was selected as the final downscaling algorithm in this study. The final downscaled results were validated by applying the observations for a duration of 11years obtained from six raingauge stations in the Qaidam Basin. These results indicated that the downscaled result effectively captured the trends in inter-annual variability and the magnitude of annual precipitation with the coefficient of determination r~2 ranging from 0.72 to 0.96 at six different raingauge stations.
机译:具有高空间分辨率的降水数据的可获得性在诸如水文学,气象学和生态学的若干应用中至关重要。当前,主要的降水估计来源有两个:雨量计站和遥感技术。但是,大量研究表明,基于雨量计站的传统点测量无法有效反映降水的空间变化,尤其是在非流域盆地。遥感技术大大提高了降水观测的质量,并产生了相当高分辨率的网格化降水场。这些源自卫星的产品已在世界各地广泛使用。但是,当应用于当地盆地和地区时,这些产品的空间分辨率太粗糙了。在本文中,我们提出了一种基于降水和柴达木盆地其他环境因素(例如地形和植被)之间关系的统计缩减算法,该算法是为缩减这些遥感产品的空间降水场而开发的。热带雨量测量任务(TRMM)3B43数据集,航天飞机雷达地形任务(SRTM)的数字高程模型(DEM)和SPOT VEGETATION演示了该算法。降水,DEM与植被的标准化差异植被指数(NDVI)之间的统计关系在不同尺度上是可变的。因此,在四个不同的尺度(分别为0.25°,0.50°,0.75°和1.00°)下建立了多元线性回归模型。应用降尺度方法,从1999年到2009年,每年将TRMM 3B43 0.25°×0.25°降水场降尺度为1×1km像素降水。基于三个标准,将这四个降尺度结果相互比较并进行回归在本研究中,选择以0.50°分辨率建立的模型作为最终的降尺度算法。通过使用从柴达木盆地的六个雨量计站获得的长达11年的观测值,对最终的缩小结果进行了验证。这些结果表明,降尺度结果有效地捕获了年际变化趋势和年降水量的趋势,在六个不同的雨量计站,确定系数r〜2在0.72至0.96之间。

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