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Geostatistical Approaches to Conflation of Continental Snow Data

机译:对大陆雪数据混合的地质统计方法

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Information on snow cover extent and mass is important for characterization of hydrological systems at different spatial and temporal scales,and for effective water resources management. This paper explores geostatistics for conflation of ground-measured and passive microwave remotely sensed snow data,which are commonly known as primary and secondary data,respectively. A modification to conventional cokriging is proposed,which first estimates differenced local means between sparsely distributed primary data and densely sampled secondary data by co-kriging,followed by a best linear estimation of the primary variable based on the primary data and bias-corrected secondary data,with variogram models revised in the light of corrections made to the original secondary data. An experiment was carried out with snow depth (SD) data derived from the Advanced Microwave Scanning Radiometer for EOS (AMSR-E) instrument and the World Meteorological Organization (WMO) SD measurement,confirming the effectiveness of the proposed methodology.
机译:有关雪覆盖范围和质量的信息对于不同空间和时间尺度的水文系统的表征是重要的,以及有效的水资源管理。本文探讨了遥感雪数据的地面测量和被动微波的混合的地质学,分别称为初级和二级数据。提出了对传统Cokriging的修改,首先估计通过Co-Kriging稀疏分布的主数据和密集采样的辅助数据之间的局部意味着差异,然后基于主数据和偏置校正的次要数据进行最佳线性估计主变量,Varoogram模型根据对原始辅助数据的校正修订。通过用于EOS(AMSR-E)仪器和世界气象组织(WMO)SD测量的高级微波扫描辐射计的雪深(SD)数据进行了实验,确认了提出的方法的有效性。

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