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首页> 外文期刊>Hydrology and Earth System Sciences Discussions >An ensemble square root filter for the joint assimilation of surface soil moisture and leaf area index within the Land Data Assimilation System LDAS-Monde: application over the Euro-Mediterranean region
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An ensemble square root filter for the joint assimilation of surface soil moisture and leaf area index within the Land Data Assimilation System LDAS-Monde: application over the Euro-Mediterranean region

机译:一个集成方滤波器,用于在土地数据同化系统中的地表土壤水分和叶面积指数的关节同化,LDAS-Monde:欧元地中海地区的应用

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This paper introduces an ensemble square root filter (EnSRF) in the context of jointly assimilating observations of surface soil moisture (SSM) and the leaf area index (LAI) in the Land Data Assimilation System LDAS-Monde. By ingesting those satellite-derived products, LDAS-Monde constrains the Interaction between Soil, Biosphere and Atmosphere (ISBA) land surface model (LSM), coupled with the CNRM (Centre National de Recherches Météorologiques) version of the Total Runoff Integrating Pathways (CTRIP) model to improve the reanalysis of land surface variables (LSVs). To evaluate its ability to produce improved LSVs reanalyses, the EnSRF is compared with the simplified extended Kalman filter (SEKF), which has been well studied within the LDAS-Monde framework. The comparison is carried out over the Euro-Mediterranean region at a 0.25° spatial resolution between 2008 and 2017. Both data assimilation approaches provide a positive impact on SSM and LAI estimates with respect to the model alone, putting them closer to assimilated observations. The SEKF and the EnSRF have a similar behaviour for LAI showing performance levels that are influenced by the vegetation type. For SSM, EnSRF estimates tend to be closer to observations than SEKF values. The comparison between the two data assimilation approaches is also carried out on unobserved soil moisture in the other layers of soil. Unobserved control variables are updated in the EnSRF through covariances and correlations sampled from the ensemble linking them to observed control variables. In our context, a strong correlation between SSM and soil moisture in deeper soil layers is found, as expected, showing seasonal patterns that vary geographically. Moderate correlation and anti-correlations are also noticed between LAI and soil moisture, varying in space and time. Their absolute value, reaching their maximum in summer and their minimum in winter, tends to be larger for soil moisture in root-zone areas, showing that assimilating LAI can have an influence on soil moisture. Finally an independent evaluation of both assimilation approaches is conducted using satellite estimates of evapotranspiration (ET) and gross primary production (GPP) as well as measures of river discharges from gauging stations. The EnSRF shows a systematic albeit moderate improvement of root mean square differences (RMSDs) and correlations for ET and GPP products, but its main improvement is observed on river discharges with a high positive impact on Nash–Sutcliffe efficiency scores. Compared to the EnSRF, the SEKF displays a more contrasting performance.
机译:本文介绍了一个集成方块滤波器(EnsRF),在联合吸收地表土壤水分(SSM)和叶片区域指数(LAI)中的陆地数据同化系统LDAS-Monde中的叶子区域指数(LAI)。通过摄取那些卫星衍生的产品,LDAS-Monde限制了土壤,生物圈和大气(ISBA)陆表面模型(LSM)之间的相互作用,加上总径流集成途径的CNRM(Center National De RecherchesMétéorologiques)版本(携程)改善陆地变量的再分析(LSV)的模型。为了评估其生产改进的LSVS Reanalyses的能力,将ENSRF与简化的扩展卡尔曼滤波器(SEKF)进行比较,这在LDAS-Monde框架内得到了很好地研究。比较在2008年至2017年间的0.25°空间分辨率下进行了比较。两种数据同化方法都对单独的模型提供了对SSM和LAI估计的积极影响,使他们更接近同化的观察。 SEKF和ENSRF具有类似的行为,显示荔枝的性能水平。对于SSM,ENSRF估计往往比SEKF值更接近观察。两种数据同化方法之间的比较也是在其他土壤中的未观察到的土壤水分上进行的。通过CoviRARF在ENSRF中更新了未观察的控制变量,并通过将它们链接到观察到的控制变量的集合中采样的相关性更新。在我们的背景下,正如所预期的那样,发现SSM和土壤水分在深层土壤层中的强烈关联,显示出在地理上变化的季节性模式。在赖和土壤水分之间,在空间和时间变化之间也注意到中等相关性和反相关性。他们的绝对价值,夏季最大值及其最低限度往往在根区土壤水分往往更大,表明同化莱可能对土壤水分产生影响。最后,使用蒸煮术(ET)和总初级生产(GPP)以及从测量站的河流排放措施进行了对两种同化方法的独立评估。 ENSRF显示系统虽然适度改善了均方根均值(RMSDS)和ET和GPP产品的相关性,但其在河流排放中观察到其主要改善,具有高积极影响的纳什 - Sutcriffe效率分数。与ENSRF相比,SEKF显示出更令人对比的性能。

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