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Evaluation of Satellite Land Surface Temperatures Using Ground Measurements from Surface Radiation Budget Network

机译:卫星陆地表面温度评价表面辐射预算网络地面测量

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Evaluation of satellite land surface temperature (LST) is one of the most difficult tasks in LST retrieval algorithm development, because of spatial and temporal variability of land surface temperature and surface emissivity variations. A large number of high quality "match-up" satellite and ground LST data is needed for the evaluation process. In developing a LST algorithm for the GOES-R Advanced Baseline Imager, we produced a set of "match-up" dataset from SURFace RADiation (SURFRAD) budget network ground measurements and GOES-8 and -10 satellite measurements. The dataset covers one-year GOES Imager data over six SURFRAD sites in the United States. A stringent cloud filtering procedure was applied to minimize cloud contamination in the match-up dataset. Each of the SURFRAD sites contains enough match-up data pairs for ensuring significance of statistical analyses of the LST algorithm. The evaluation was performed by directly and indirectly comparing the SURFRAD and satellite LSTs of each site. The direct comparison was illustrated using scatter plots and histogram plots of the ground and the satellite LSTs, while the indirect comparison was performed using a matrix analysis model developed by Flynn (2006)[1]. We demonstrated that LST measurements from the SURFRAD instrument can be used in our evaluation of the GOES-R LST algorithm development and the precision of the GOES-R LST algorithm can be fairly well estimated.
机译:卫星陆地温度评估(LST)是LST检索算法开发中最困难的任务之一,由于土地表面温度和表面发射率变化的空间和时间变化。评估过程需要大量高质量的“匹配”卫星和地面LST数据。在开发GOUR-R高级基线成像器的LST算法时,我们从表面辐射(SURFRAD)预算网络接地测量和GOY-8和-10卫星测量的一组“匹配”数据集。 DataSet涵盖了一年的成像数据在美国六个Surfrad网站上的成像数据。应用严格的云过滤过程以最小化匹配数据集中的云污染。每个SURFRAD站点包含足够的匹配数据对,以确保LST算法的统计分析意义。通过直接和间接比较每个部位的Surfrad和卫星LST进行评价。使用地面和卫星LST的散点图和直方图图说明了直接比较,而使用由Flynn(2006)[1]开发的矩阵分析模型进行间接比较。我们证明,来自SURFRAD仪器的LST测量可以用于我们对GUS-R LST算法的评估和GOY-R LST算法的精度估计。

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