Estimation of sensible and latent heat flux by assimilating MODIS LST products[J]. Journal of Remote Sensing, 2009,13(6):989-1009. DOI: 10.11834/jrs.20090602.
a land surface temperature data assimilation scheme is developed based on Ensemble Kalman Filter (EnKF) and Common Land Model version 1.0 (CLM)
which is mainly used to improve the estimation of the sensible and latent heat fluxes by assimilating MODIS land surface temperature (LST) products. Leaf area index (LAI) is also updated dynamically by MODIS LAI products. In this study
the relationship between the MODIS LST and the CLM surface temperature is determined and taken as the observation operator of the assimilation scheme. Meanwhile
the MODIS LST is compared with the ground-measured surface temperature
and the Root Mean Square Error (RMSE) is taken as the observation error. The scheme is tested and validated based on measurements in three observation stations (Blackhill
Bondville and Brookings) of Ameriflux. Results indicate that data assimilation method improves the estimation of surface temperature and sensible heat flux. The RMSE of sensible heat flux reduced from 81.5W·m-2 to 58.4W·m-2 at the Blackhill site
from 47.0W·m-2 to 31.8W·m-2 at the Bondville site
from 46.5W·m-2 to 45.1W·m-2 at the Brookings site. The RMSE of latent heat fluxes reduced from 88.6W·m-2 to 57.7W·m-2 at the Bondville site
from 53.4W·m-2 to 47.2W·m-2 at the Blackhill site. In addition
it is a practical way to improve the estimation of sensible and latent heat flux by assimilating MODIS LST into land surface model.
关键词
MODIS温度产品通用陆面模式集合卡尔曼滤波地表水热通量
Keywords
MODIS land surface temperature productscommon land modelensemble kalman filtersensible and latent heat flux