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首页> 外文期刊>Journal of Hydrology >Land surface model calibration through microwave data assimilation for improving soil moisture simulations
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Land surface model calibration through microwave data assimilation for improving soil moisture simulations

机译:通过微波数据同化进行地表模型校准,以改善土壤湿度模拟

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Soil moisture is a key variable in climate system, and its accurate simulation needs effective soil parameter values. Conventional approaches may obtain soil parameter values at point scale, but they are costly and not efficient at grid scale (10-100 km) of current climate models. This study explores the possibility to estimate soil parameter values by assimilating AMSR-E (Advanced Microwave Scanning Radiometer for Earth Observing System) brightness temperature (TB) data. In the assimilation system, the TB is simulated by the coupled system of a land surface model (LSM) and a radiative transfer model (RTM), and the simulation errors highly depend on parameters in both the LSM and the RTM. Thus, sensitive soil parameters may be inversely estimated through minimizing the TB errors. A crucial step for the parameter estimation is made to suppress the contamination of uncertainties in atmospheric forcing data. The effectiveness of the estimated parameter values is evaluated against intensive measurements of soil parameters and soil moisture in three grasslands of the Tibetan Plateau and the Mongolian Plateau. The results indicate that this satellite data-based approach can improve the data quality of soil porosity, a key parameter for soil moisture modeling, and LSM simulations with the estimated parameter values reasonably reproduce the measured soil moisture. This demonstrates it is feasible to calibrate LSMs for soil moisture simulations at grid scale by assimilating microwave satellite data, although more efforts are expected to improve the robustness of the model calibration. (C) 2015 Elsevier B.V. All rights reserved.
机译:土壤水分是气候系统中的关键变量,其精确的模拟需要有效的土壤参数值。常规方法可能会在点尺度上获得土壤参数值,但在当前气候模型的网格尺度(10-100 km)下它们昂贵且效率不高。这项研究探索了通过吸收AMSR-E(用于地球观测系统的先进微波扫描辐射仪)亮度温度(TB)数据来估算土壤参数值的可能性。在同化系统中,TB是通过陆面模型(LSM)和辐射传递模型(RTM)的耦合系统来模拟的,模拟误差高度依赖于LSM和RTM中的参数。因此,可以通过使TB误差最小化来反过来估算敏感的土壤参数。参数估算的关键步骤是抑制大气强迫数据中不确定性的污染。针对青藏高原和蒙古高原的三个草原上的土壤参数和土壤水分的密集测量,评估了估计参数值的有效性。结果表明,这种基于卫星数据的方法可以改善土壤孔隙度的数据质量,土壤湿度建模的关键参数以及LSM模拟,并利用估计的参数值合理地重现测得的土壤湿度。这表明通过吸收微波卫星数据在网格规模上对用于土壤水分模拟的LSM进行校准是可行的,尽管预计将进行更多的努力来提高模型校准的鲁棒性。 (C)2015 Elsevier B.V.保留所有权利。

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