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Spatial and temporal patterns of land surface fluxes from remotely sensed surface temperatures within an uncertainty modelling framework

机译:不确定性建模框架内来自遥感表面温度的地表通量的时空分布

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摘要

Characterising the development of evapotranspiration through time is a difficult task, particularly when utilising remote sensing data, because retrieved information is often spatially dense, but temporally sparse. Techniques to expand these essentially instantaneous measures are not only limited, they are restricted by the general paucity of information describing the spatial distribution and temporal evolution of evaporative patterns. In a novel approach, temporal changes in land surface temperatures, derived from NOAA-AVHRR imagery and a generalised split-window algorithm, are used as a calibration variable in a simple land surface scheme (TOPUP) and combined within the Generalised Likelihood Uncertainty Estimation (GLUE) methodology to provide estimates of areal evapotranspiration at the pixel scale. Such an approach offers an innovative means of transcending the patch or landscape scale of SVAT type models, to spatially distributed estimates of model output. The resulting spatial and temporal patterns of land surface fluxes and surface resistance are used to more fully understand the hydro-ecological trends observed across a study catchment in eastern Australia. The modelling approach is assessed by comparing predicted cumulative evapotranspiration values with surface fluxes determined from Bowen ratio systems and using auxiliary information such as in-situ soil moisture measurements and depth to groundwater to corroborate observed responses.
机译:表征随时间的蒸散发是一项艰巨的任务,特别是在利用遥感数据时,因为检索到的信息通常在空间上很密集,但在时间上稀疏。扩展这些基本瞬时措施的技术不仅受到限制,而且还受到描述蒸发模式的空间分布和时间演变的信息的普遍匮乏的限制。在一种新颖的方法中,源自NOAA-AVHRR图像和广义拆分窗口算法的地表温度的时空变化在简单地表方案(TOPUP)中用作校准变量,并在广义似然不确定性估计中组合( GLUE)方法可提供像素级的区域蒸散量估算值。这种方法提供了一种创新的方法,可以超越SVAT类型模型的斑块或景观尺度,而可以对模型输出进行空间分布的估计。由此产生的土地表面通量和表面阻力的时空格局可用于更全面地了解整个澳大利亚东部研究集水区所观测到的水生态趋势。通过将预测的累积蒸散值与从Bowen比率系统确定的表面通量进行比较,并使用辅助信息(例如原位土壤水分测量值和地下水深度)来证实所观察到的响应,从而评估建模方法。

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