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Abstract:
Root zone soil moisture controls the land-atmosphere
exchange of water
and energy and exhibits memory that may be useful for climate prediction
at monthly scales. Assimilation of satellite-based surface soil moisture
observations into a land surface model is an effective way to estimate
large-scale root zone soil moisture. The propagation of surface
information into deeper soil layers depends on the modelspecific
representation of subsurface physics that is used in the assimilation system.
In a suite of experiments we assimilate synthetic surface soil moisture
observations into four different models (Catchment, Mosaic, Noah and CLM)
using the Ensemble Kalman Filter. We demonstrate that identical twin
experiments significantly overestimate the information that can be
obtained from the assimilation of surface soil moisture observations.
The second key result indicates that the potential of surface soil
moisture assimilation to improve root zone information is higher
when the surface to root zone coupling is stronger. Our experiments
also suggest that (faced with unknown true subsurface physics)
overestimating surface to root zone coupling in the assimilation system
provides more robust skill improvements in the root zone compared
with underestimating the coupling. When CLM is excluded from the
analysis, the skill improvements from using models with different
vertical coupling strengths are comparable for different subsurface
truths. Finally, the skill improvements through assimilation were found
to be sensitive to the regional climate and soil types.