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Improvements in the forecasts of near-surface variables in the Global Forecast System (GFS) via assimilating ASCAT soil moisture retrievals

机译:通过同化ASCAT土壤水分检索,全局预测系统(GFS)中近表面变量预测的改进

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Recent research has shown that assimilating satellite soil moisture (SM) retrievals into the land surface models (LSMs) improves simulations of land-atmosphere water and energy exchanges. With satellite SM retrievals becoming widely and continuously available, it is desirable to examine the impact of assimilating them into numerical weather prediction models in order to improve numerical weather forecast skills. Based on the development of the coupled system of National Centers for Environmental Prediction (NCEP)-Global Forecast System (GFS) and National Aeronautics and Space Administration (NASA)-Land Information System (LIS) in this paper, we designed an experiment to demonstrate the impacts of assimilating the Advanced Scatterometer (ASCAT) SM data products on the weather forecasts of GFS. With respect to the surface air temperature analysis product of National Oceanic and Atmospheric Administration (NOAA)-Climate Prediction Center (CPC) and CPC's morphing method-based precipitation data, improvement from the ASCAT SM assimilation for probabilities of high quality forecasts can reach up to 1.7% for GFS precipitation, 3.1% for 2-meter minimum temperature, and 3.1% for 2-meter diurnal temperature range predictions, respectively. These results suggest that satellite SM data assimilation could be beneficial for GFS numerical weather forecasts of NOAA NCEP.
机译:最近的研究表明,将卫星土壤水分(SM)检索到陆地表面模型(LSM)改善了土地 - 大气水和能源交换的模拟。利用卫星SM检索广泛且不断可用,希望检查将它们同化到数值天气预报模型中的影响,以改善数值天气预报技能。基于本文的国家环境预测(NCEP) - Global预测系统(GFS)和美国国家航空航天局(NASA)中的国家中心耦合系统的发展,我们设计了一个实验来证明吸收先进散射仪(ASCAT)SM数据产品对GFS天气预报的影响。关于国家海洋和大气管理局(NOAA) - 高度预测中心(CPC)和CPC的基于CPC的沉淀数据的表面空气温度分析产物,从ASCAT SM同化的改进,高质量预测的概率可以达到GFS沉淀的1.7%,2米最低温度为3.1%,分别为2米昼夜温度范围预测的3.1%。这些结果表明,卫星SM数据同化可能对NOAA NCEP的GFS数值天气预报有益。

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