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首页> 外文期刊>Journal of hydrometeorology >Impact of covariance localization on ensemble estimation of surface downwelling longwave and shortwave radiation fluxes
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Impact of covariance localization on ensemble estimation of surface downwelling longwave and shortwave radiation fluxes

机译:协方差局域化对地表下行长波和短波辐射通量的总体估计的影响

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摘要

Accurate estimates of terrestrial hydrologic states and fluxes are, in large part, dependent on accurate estimates of the spatiotemporal variability and uncertainty of land surface forcings, including downwelling longwave (LW) and shortwave (SW) fluxes. However, such characterization of land surface forcings does not always receive proper attention. This study attempts to better estimate LW and SW fluxes, including their uncertainties, by merging different sources of information while considering horizontal error correlations via implementation of a 2Dconditioning procedure within a Bayesian framework.Atotal of 25 experiments were performed utilizing four different, readily available downwelling radiation products. The localized region of space used to constrain horizontal error correlations was defined using an influence length, L, specified a priori. Quantitative comparisons are made against an independent, ground-based observational network. In general, results suggest moderate improvement in cloudy-sky LW fluxes and modest improvement in clearsky SW fluxes during certain times of the year when using the 2D framework relative to a more traditional 1D framework, but only up to a certain influence length scale. Beyond this length scale the flux estimates were typically degraded because of the introduction of spurious correlations. The influence length scale that yielded the greatest improvement in LW radiative flux estimation during cloudy-sky conditions, in general, increased with increasing cloud cover. These findings have implications for improving downwelling radiative flux estimation and further enhancing existing Land Data Assimilation System (LDAS) frameworks.
机译:陆地水文状态和通量的准确估计在很大程度上取决于时空变异性和陆地表面强迫不确定性的准确估计,包括下流长波(LW)和短波(SW)通量。但是,这种对陆地表面强迫的表征并不总是得到适当的重视。这项研究试图通过合并不同的信息源,同时通过在贝叶斯框架内实施2D调节程序来考虑水平误差相关性,从而更好地估计LW和SW通量,包括其不确定性。总共进行了25个实验,利用四个不同的,容易获得的下降井进行了辐射产品。使用先验指定的影响长度L定义用于约束水平误差相关性的空间局部区域。针对独立的地面观测网络进行了定量比较。通常,结果表明,相对于更传统的1D框架,在使用2D框架的一年中,多云天空LW通量的适度改善和晴空SW流量的适度改善,但仅限于一定的影响长度范围。超出此长度范围,通量估计值通常会由于引入虚假相关而降低。通常,在多云的天空条件下,LW辐射通量估计得到最大改善的影响长度尺度随云量的增加而增加。这些发现对改善下行流辐射通量估算和进一步增强现有的土地数据同化系统(LDAS)框架具有重要意义。

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