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Modelling tropical dry forest deciduousness using spatially downscaled TRMM data

机译:使用空间缩小的TRMM数据模拟热带干旱森林的落叶性

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Increases in the intensity and spatial extent of dry season deciduousness in the tropical dry forests of the Mexican Yucatán may impact biosphere-atmosphere interactions. Issues of data scale affect characterization of the relationship between precipitation and vegetation leaf canopy condition using remotely sensed measurements of precipitation. This paper examines the use of a set of spatial and topographical methods to downscale rainfall data to account for observed differences in total monthly rainfall measurements at weather stations (N=22) and measurements from the Tropical Rainfall Measuring Mission. Each is evaluated by the resulting increase in spatially-averaged coefficient of determination from a per-pixel (0.01 deg.) linear regression model of MODIS EVI and contemporaneous and 1-month-lagged precipitation image time series (2000–2001). Increases in model explanatory power are observed for all downscaling techniques, with AR² ranging from 0.024 to 0.046. Results suggest spatial variability of sensitivity to water-scarce conditions within semi-deciduous forests in the area.
机译:墨西哥尤卡坦州热带干旱森林中干旱季节落叶的强度和空间范围的增加可能会影响生物圈与大气之间的相互作用。数据规模问题会影响遥感与降水量的测量,从而影响降水量与植被冠层状况之间关系的表征。本文研究了使用一组空间和地形学方法来缩减降雨数据,以解释气象站(N = 22)的每月总降雨量测量值和热带雨量测量团的测量值之间的观测差异。通过对MODIS EVI的每像素(0.01度)线性回归模型以及同期和滞后1个月的降水图像时间序列(2000-2001)的空间平均确定系数的增加,对每种方法进行评估。所有降尺度技术的模型解释力都有所提高,AR²范围为0.024至0.046。结果表明,该地区半落叶林对缺水条件敏感性的空间变异性。

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