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首页> 外文期刊>Journal of Geophysical Research, D. Atmospheres: JGR >Assimilation of land surface temperature into the land surface model JULES with an ensemble Kalman filter
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Assimilation of land surface temperature into the land surface model JULES with an ensemble Kalman filter

机译:用集成卡尔曼滤波将地表温度纳入地表模型JULES中

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摘要

Land surface models have uncertainties due to their approximation of physical processes and the heterogeneity of the land surface. These can be compounded when key variables are inadequately represented. Land surface temperature (LST) is critical as it forms an integral component in the surface energy budget, water stress evaluation, fuel moisture derivation, and soil moisture-climate feedbacks. A reduction in the uncertainty of surface energy fluxes, and moisture quantification, is assumed to be achievable by constraining simulations of LST with observation data. This technique is known as data assimilation and involves the adjustment of the model state at observation times with measurements of a predictable uncertainty. In this paper, the validity of LST simulations in a regionalized parameterization of the land surface model Joint UK Land Environment Simulator (JULES) for Africa is assessed by way of a multitemporal intercomparison study with the Moderate Resolution Imaging Spectroradiometer (MODIS), the Advanced Along Track Scanning Radiometer (AATSR), and the Spinning Enhanced Visible and Infrared Imager (SEVIRI) thermal products, with a two-thirds reduction in model bias found when soil properties are reparameterized. A data assimilation experiment of SEVIRI LST into the JULES model via an ensemble Kalman filter shows an improvement in the modeled LST, soil moisture, and latent and sensible heat fluxes. This paper presents the first investigation into reducing the uncertainty in modeling energy and water fluxes with the United Kingdom's most important land surface model, JULES, by means of data assimilation of LST.
机译:地表模型由于物理过程的近似和地表的异质性而具有不确定性。当关键变量表示不充分时,这些可能会变得更加复杂。陆地表面温度(LST)是至关重要的,因为它在表面能收支,水应力评估,燃料水分推导以及土壤水分-气候反馈中是不可或缺的组成部分。假定通过用观测数据约束LST的模拟,可以减少表面能通量的不确定性和水分定量。这项技术称为数据同化,涉及在观察时通过可预测不确定性的测量来调整模型状态。在本文中,LST模拟在土地表面模型区域联合参数化中的有效性(联合英国土地环境模拟器(JULES)在非洲)通过多时间比对研究与中等分辨率成像光谱仪(MODIS)进行了评估,轨道扫描辐射计(AATSR)和旋转增强型可见光和红外成像仪(SEVIRI)热产品,重新设定土壤特性后发现模型偏差减少了三分之二。通过集成卡尔曼滤波器将SEVIRI LST数据融合到JULES模型中的实验表明,在建模的LST,土壤湿度以及潜热通量和显热通量方面都有改进。本文通过对LST进行数据同化,首次提出了使用英国最重要的地表模型JULES来减少能源和水通量建模不确定性的首次研究。

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