首页> 外文期刊>International journal of applied earth observation and geoinformation >Improving land surface soil moisture and energy flux simulations over the Tibetan plateau by the assimilation of the microwave remote sensing data and the GCM output into a land surface model
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Improving land surface soil moisture and energy flux simulations over the Tibetan plateau by the assimilation of the microwave remote sensing data and the GCM output into a land surface model

机译:通过将微波遥感数据和GCM输出同化为地表模型来改善青藏高原地表土壤水分和能量通量的模拟

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The land surface soil moisture is a crucial variable in weather and climate models. This study presents a land data assimilation system (LDAS) that aims to improve the simulation of the land surface soil moisture and energy fluxes by merging the microwave remote sensing data and the general circulation model (GCM) output into a land surface model (LSM). This system was applied over the Tibetan Plateau, using the National Centers for Environmental Prediction (NCEP) reanalysis data as forcing data and the Advanced Microwave Scanning Radiometers for EOS (AMSR-E) brightness temperatures as an observation. The performance of our four data sources, which were NCEP, AMSR-E, LDAS and simulations of Simple Biosphere Model 2 (SiB2), was assessed against 5 months of in situ measurements that were performed at two stations: Gaize and Naqu. For the surface soil moisture, the LDAS simulations were superior to both NCEP and SiB2, and there was more than a one-third reduction in the root mean squared errors (RMSE) for both of the stations. Compared with the AMSR-E soil moisture retrievals, the LDAS simulations were comparable at the Gaize station, and they were superior at the Naqu station. For the whole domain intercomparison, the results showed that the LDAS simulation of the soil moisture field was more realistic than the NCEP and SiB2 simulations and that the LDAS could estimate land surface states properly even in the regions where AMSR-E failed to cover and/or during the periods that the satellite did not overpass. For the surface energy fluxes, the LDAS estimated the latent heat flux with an acceptable accuracy (RMSE less than 35W/m2), with a one-third reduction in the RMSE from the SiB2. For the 5-month whole plateau simulation, the LDAS produced a much more reasonable Bowen Ratio than the NCEP, and it also generated a clear contrast of the land surface status over the plateau, which was wet in the southeast and dry in the northwest, during the monsoon and post-monsoon seasons. Because the LDAS only uses globally available data sets, this study reveals the potential of the LDAS to improving the land surface energy and water flux simulations in ungauged and/or poorly gauged regions.
机译:土地表层土壤水分是天气和气候模型中的关键变量。这项研究提出了一种土地数据同化系统(LDAS),该系统旨在通过将微波遥感数据和一般环流模型(GCM)输出合并到土地表面模型(LSM)中来改善土地表面土壤水分和能量通量的模拟。 。该系统应用于青藏高原,使用国家环境预测中心(NCEP)的再分析数据作为强迫数据,并使用EOS的先进微波扫描辐射计(AMSR-E)的亮度温度作为观测值。我们对四个数据源(NCEP,AMSR-E,LDAS和简单生物圈模型2(SiB2)的模拟)的性能进行了对比,这些数据源是在两个站点(Gaize和Naqu)进行的5个月现场测量的评估。对于表层土壤水分,LDAS模拟优于NCEP和SiB2,两个站的均方根误差(RMSE)降低了三分之一以上。与AMSR-E土壤水分反演相比,Gaize站的LDAS模拟具有可比性,Naqu站的LDAS模拟具有优势。对于整个域的比较,结果表明,土壤水分场的LDAS模拟比NCEP和SiB2模拟更现实,并且即使在AMSR-E不能覆盖和/或未覆盖的地区,LDAS仍可以正确估算土地表面状态。或在卫星未超越时。对于表面能通量,LDAS以可接受的精度(RMSE小于35W / m2)估算潜热通量,而SiB2的RMSE降低了三分之一。在整个5个月的高原模拟中,LDAS产生的Bowen比率比NCEP更为合理,并且也产生了高原表面状态的鲜明对比,高原地区东南部潮湿,西北部干燥,在季风和季风后的季节。由于LDAS仅使用全球可用的数据集,因此本研究揭示了LDAS在改善未开垦和/或测量欠佳地区的土地表面能和水通量模拟方面的潜力。

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