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Dynamic characterization of vegetation using remote sensing for hydrological modelling at basin scale

机译:流域尺度水文模拟的植被动态表征

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Spatio-temporal changes in vegetation at the basin scale are difficult to characterize, and remote sensing is a major source of data for this purpose. These sensors may provide distributed series of spectral properties of the vegetation with different spatial and temporal resolutions, but they do not always satisfy the requirements of some of the applications. These limitations can be overcome with the use of image integration techniques, which allow for the combination of sensors with different characteristics. This work presents the monitoring of the vegetation cover in the Guadalfeo River Basin (Spain), with a view to its hydrological modeling, by using Landsat-TM and MODIS data, analyzing the implications of the scale differences in an heterogeneous area. A preliminary study is carried out into the deviations of NDVI and ground cover fraction (fv) between the concurrent data of both sensors. Thereafter, the STARFM integration algorithm is applied and evaluated to obtain synthetic NDVI images at the spatial resolution of Landsat-TM data with MODIS time steps. The comparison between Landsat-TM and MODIS parameters revealed deviations on average between 2-5% for NDVI and 3-5% for fv. No direct relationship was found between these deviations and basin topography. However, higher deviations corresponded with the vegetation types with higher ground cover fractions and heterogeneous landuses (fv relative deviations of 10% and 6% for conifers and quercus-scrub, respectively) The STARFM algorithm improved the NDVI estimations when compared to the previous Landsat-TM date, with reductions in the average NDVI differences of around 0.02 on average for the six simulated dates, with the accuracy of the predictions depending on data input for the model and vegetation cover types.
机译:流域尺度上植被的时空变化难以描述,而遥感是为此目的提供数据的主要来源。这些传感器可以提供具有不同空间和时间分辨率的分布式光谱特性系列,但是它们并不总是满足某些应用程序的要求。这些限制可以通过使用图像集成技术来克服,该技术可以将具有不同特性的传感器组合在一起。这项工作通过使用Landsat-TM和MODIS数据,对瓜达菲奥河流域(西班牙)的植被覆盖度进行了监测,以对其进行水文建模,分析了异质区域尺度差异的影响。对两个传感器的并发数据之间的NDVI和地面覆盖率(fv)的偏差进行了初步研究。之后,应用STARFM集成算法并对其进行评估,以获得具有MODIS时间步长的Landsat-TM数据的空间分辨率的合成NDVI图像。 Landsat-TM和MODIS参数之间的比较表明,NDVI的平均偏差在2-5%之间,fv的平均偏差在3-5%之间。这些偏差与盆地地形之间没有直接关系。但是,较高的偏差对应于具有较高地被覆盖率和非均质土地利用的植被类型(针叶树和栎灌木的相对偏差分别为10%和6%)与以前的Landsat-相比,STARFM算法改进了NDVI估计值, TM日期,六个模拟日期的平均NDVI差异平均减少0.02,而预测的准确性取决于模型和植被覆盖类型的数据输入。

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