DocumentCode
1521064
Title
Variational data assimilation of microwave radiobrightness observations for land surface hydrology applications
Author
Reichle, Rolf H. ; McLaughlin, Dennis B. ; Entekhabi, Dara
Author_Institution
Goddard Earth Sci. & Technol. Center, Maryland Univ., Baltimore, MD, USA
Volume
39
Issue
8
fYear
2001
fDate
8/1/2001 12:00:00 AM
Firstpage
1708
Lastpage
1718
Abstract
Our ability to accurately describe large-scale variations in soil moisture is severely restricted by process uncertainty and the limited availability of appropriate soil moisture data. Remotely sensed microwave radiobrightness observations can cover large scales but have limited resolution and are only indirectly related to the hydrologic variables of interest. The authors describe a four-dimensional (4D) variational assimilation algorithm that makes best use of available information while accounting for both measurement and model uncertainty. The representer method used is more efficient than a Kalman filter because it avoids explicit propagation of state error covariances. In a synthetic example, which is based on a field experiment, the authors demonstrate estimation performance by examining data residuals. Such tests provide a convenient way to check the statistical assumptions of the approach and to assess its operational feasibility. Internally computed covariances show that the estimation error decreases with increasing soil moisture. An adjoint analysis reveals that trends in model errors in the soil moisture equation can be estimated from daily L-band brightness measurements, whereas model errors in the soil and canopy temperature equations cannot be adequately retrieved from daily data alone. Nonetheless, state estimates obtained from the assimilation algorithm improve significantly on prior model predictions derived without assimilation of radiobrightness data
Keywords
geophysical signal processing; hydrological techniques; moisture measurement; radiometry; remote sensing; soil; terrain mapping; L-band; adjoint analysis; algorithm; estimation error; four dimensional method; four dimensional variational assimilation algorithm; hydrology; land surface; large scale variation; measurement technique; microwave radiobrightness; microwave radiometry; remote sensing; representer method; soil moisture; terrain mapping; variational data assimilation; Data assimilation; Equations; Estimation error; Hydrologic measurements; L-band; Large-scale systems; Measurement uncertainty; Soil measurements; Soil moisture; Testing;
fLanguage
English
Journal_Title
Geoscience and Remote Sensing, IEEE Transactions on
Publisher
ieee
ISSN
0196-2892
Type
jour
DOI
10.1109/36.942549
Filename
942549
Link To Document