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首页> 外文期刊>Journal of hydrometeorology >Improving Predictions of Water and Heat Fluxes by Assimilating MODIS Land Surface Temperature Products into the Common Land Model
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Improving Predictions of Water and Heat Fluxes by Assimilating MODIS Land Surface Temperature Products into the Common Land Model

机译:通过将MODIS陆地表面温度乘积纳入Common Land模型来改善水和热通量的预测

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Four data assimilation scheme combinations derived from two strategies and two optimization algorithms [the ensemble Kalman filter (EnKF) and the shuffled complex evolution method developed at The University of Arizona (SCE-UA)] are developed based on the Common Land Model (CLM) to improve predictions of water and heat fluxes. The first strategy is constructed through adjusting the soil temperature, while the second strategy adjusts the soil moisture. Moderate Resolution Imaging Spectroradiometer (MODIS) land surface temperature (LST) products are compared with ground-measured surface temperature, and assimilated into the CLM. The relationship equation between the MODIS LST products and CLM surface temperature is taken as the observation operator and the root-mean-square error (RMSE) is applied as the observation error. The assimilation results are validated by measurements from six observation sites located in Germany, the United States, and China. Results indicate that the developed data assimilation schemes can improve estimates of water and heat fluxes. Overall, strategy 2 is superior to strategy 1 when using the same optimization algorithm. The EnKF algorithm performs slightly better than the SCE-UA algorithm when using the same strategy. Strategy 2 combined with the EnKF algorithm performs best for water and heat fluxes, and the reductions in the RMSE are found to be 24.0 and 15.2 W m~(-2) for sensible and latent heat fluxes, respectively. The joint assimilation of the MODIS LST and soil moisture observations can produce better results for strategy 2 with the SCE-UA. Since preprocessing model parameters are used in this study, the uncertainties in the model parameters may have resulted in suboptimal assimilation results. Therefore, model calibrations should be conducted in the future.
机译:基于通用土地模型(CLM),开发了从两种策略和两种优化算法[集合卡尔曼滤波器(EnKF)和亚利桑那大学开发的混洗复杂演化方法(SCE-UA)]得出的四种数据同化方案组合。改善对水和热通量的预测。第一种策略是通过调节土壤温度来构建的,而第二种策略是通过调节土壤湿度来构建的。将中等分辨率成像光谱仪(MODIS)地表温度(LST)产品与地面测量的表面温度进行比较,并吸收到CLM中。 MODIS LST乘积与CLM表面温度之间的关系方程用作观测算子,并且均方根误差(RMSE)被用作观测误差。同化结果通过位于德国,美国和中国的六个观测点的测量结果得到验证。结果表明,开发的数据同化方案可以改善水和热通量的估算。总体而言,使用相同的优化算法时,策略2优于策略1。使用相同的策略时,EnKF算法的性能比SCE-UA算法略好。将策略2与EnKF算法相结合,对水和热通量的效果最佳,对于显热通量和潜热通量,RMSE的降低分别为24.0和15.2 W m〜(-2)。通过SCE-UA,对MODIS LST和土壤湿度观测值的联合同化可以为策略2产生更好的结果。由于在本研究中使用了预处理模型参数,因此模型参数的不确定性可能导致次优同化结果。因此,将来应进行模型校准。

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