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Optimization of a radiative transfer forward operator for simulating smos brightness temperatures over the upper mississippi basin, usa
| Content Provider | NASA Technical Reports Server (NTRS) |
|---|---|
| Author | VanDenBerg, M. J. Tomer, S. Kumar Martens, B. Merlin, O. Bitar, A. Al DeLannoy, G. J. M. Drusch, M. Hendricks-Franssen, H.-J. Pan, M. Walker, J. P. Dumedah, G. Kerr, Y. Lievens, H. Pauwels, V. R. N. Vereecken, H. Cabot, F. Verhoest, N. E. C. Wood, E. F. |
| Copyright Year | 2014 |
| Description | The Soil Moisture and Ocean Salinity (SMOS) satellite mission is routinely providing global multi-angular observations of brightness temperature (TB) at both horizontal and vertical polarization with a 3-day repeat period. The assimilation of such data into a land surface model (LSM) may improve the skill of operational flood forecasts through an improved estimation of soil moisture (SM). To accommodate for the direct assimilation of the SMOS TB data, the LSM needs to be coupled with a radiative transfer model (RTM), serving as a forward operator for the simulation of multi-angular and multi-polarization top of atmosphere TBs. This study investigates the use of the Variable Infiltration Capacity (VIC) LSM coupled with the Community Microwave Emission Modelling platform (CMEM) for simulating SMOS TB observations over the Upper Mississippi basin, USA. For a period of 2 years (2010-2011), a comparison between SMOS TBs and simulations with literature-based RTM parameters reveals a basin averaged bias of 30K. Therefore, time series of SMOS TB observations are used to investigate ways for mitigating these large biases. Specifically, the study demonstrates the impact of the LSM soil moisture climatology in the magnitude of TB biases. After CDF matching the SM climatology of the LSM to SMOS retrievals, the average bias decreases from 30K to less than 5K. Further improvements can be made through calibration of RTM parameters related to the modeling of surface roughness and vegetation. Consequently, it can be concluded that SM rescaling and RTM optimization are efficient means for mitigating biases and form a necessary preparatory step for data assimilation. |
| File Size | 1554580 |
| Page Count | 51 |
| File Format | |
| Alternate Webpage(s) | http://archive.org/details/NASA_NTRS_Archive_20140012069 |
| Archival Resource Key | ark:/13960/t0ns5rj6p |
| Language | English |
| Publisher Date | 2014-01-01 |
| Access Restriction | Open |
| Subject Keyword | Smos Chem Brightness Temperature Climatology Oceans Soil Moisture Time Series Analysis Bias Radiative Transfer Surface Roughness Microwave Emission Salinity Ntrs Nasa Technical Reports ServerĀ (ntrs) Nasa Technical Reports Server Aerodynamics Aircraft Aerospace Engineering Aerospace Aeronautic Space Science |
| Content Type | Text |
| Resource Type | Article |