首页> 外文会议>Conference on remote sensing for agriculture, ecosystems, and hydrology >ASSIMILATION OF MODIS SNOW COVER FRACTION FOR IMPROVING SNOW VARIABLES ESTIMATION IN WEST CHINA
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ASSIMILATION OF MODIS SNOW COVER FRACTION FOR IMPROVING SNOW VARIABLES ESTIMATION IN WEST CHINA

机译:MODIS雪覆盖分数改善西部雪变量估算的同化

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Accurate estimation of snow properties is important for effective water resources management especially in mountainous areas. In this work, we develop a snow data assimilation scheme based on ensemble Kalman filter (EnKF), which can assimilate remotely sensed snow observations into the Common Land Model (CoLM) to produce spatially continuous and temporally consistent snow variables. The snow cover fraction (SCF) product (MOD10C1) from the moderate resolution imaging spectroradiometer (MODIS) aboard the NASA Terra satellite was used to update CoLM snow properties. The assimilation experiment is conducted during 2003-2004, in Xingjiang province, west China. The preliminary results are very promising and show that distributions of snow variables (such as SCF, snow depth, and SWE) are more reasonable and reliable after assimilating MODIS SCF data. The results also indicate that EnKF is an effective and operationally feasible solution for improve snow properties prediction.
机译:精确估算雪地性质对于有效的水资源管理特别是在山区的有效水资源管理是重要的。在这项工作中,我们开发了基于集合Kalman滤波器(ENKF)的雪数据同化方案,其可以使远程感测的雪观测分化为共同的土地模型(COLM),以产生空间连续和时间一致的雪变量。从中等分辨率成像光谱仪(MODIS)的雪盖分数(SCF)产品(MOD10C1)乘坐NASA Terra卫星的船舶(MODIS)用于更新COLM雪地属性。西部兴江市2003 - 2004年进行同化实验。初步结果非常有前途,并显示雪变量(如SCF,雪深,SWE)的分布在同化MODIS SCF数据后更合理可靠。结果还表明ENKF是改善雪景预测的有效和可操作可行的解决方案。

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