310-10 Research on Data Assimilation Technique in Improving Soil Water Content and Surface Flux Estimation.

See more from this Division: SSSA Division: Soil & Water Management & Conservation
See more from this Session: Soil & Water Management & Conservation: I
Tuesday, November 4, 2014: 3:35 PM
Long Beach Convention Center, S-7
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He Chen1, Baozhong Zhang2 and Jiabing Cai2, (1)China Institute of Water Resources and Hydropower Research, Beijing, CHINA
(2)China Institute of Water Resources and Hydropower Research, Beijing, China
Land surface model is treated as a powerful tool in continuous of soil water content and surface fluxes. However, simulation error tends to accumulate in the process of model simulation due to the inevitable uncertainty of forcing data and intrinsic model error. Data assimilation technique can consider the uncertainty of the model, update model states during the simulation period, and thus improve the accuracy of soil water content and surface fluxes estimation. In this study, an Ensemble Kalman Filter (EnKF) technique was coupled to a Hydrologically-Enhanced Land Process (HELP) model to update model states including soil water content and surface temperature. The remotely sensed latent heat flux (LE) estimated by Surface Energy Balance System (SEBS) was used as the observation value in the data assimilation system to update the model states such as soil water contents and surface temperatures, etc., The model was validated by the observation data in 2006 at Shandong Weishan eco-hydrological station, where the open-loop estimation without state updating was treated as the benchmark run. Results showed that the rmse of soil water content reduced by 30%-50% compared to the benchmark run, while the surface fluxes also had significant improvement to different extents, among which the rmse of LE estimation from wheat season and maize season reduced by 33% and 44%, respectively. These results demonstrated that the effect of data assimilation in improving land surface energy fluxes and soil water states is positive, which showed that data assimilation system had great potential in agriculture and water management.
See more from this Division: SSSA Division: Soil & Water Management & Conservation
See more from this Session: Soil & Water Management & Conservation: I