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CONCLUSION AND PERSPECTIVES
A regional sahel ian grassland ecosystem model had been developed within a methodology to integrate remote
sensing data into an explicit formulation of the main processes occuring in the ecosystem. A validation of the
model, irrespective of remote sensing data, had been carried out with biomass measurements acquired on two
different regions of the Sahel. In order to assess how sensitive vegetation indices are to varying vegetation
conditions, a canopy reflectance and a soil reflectance model fed with structural and other parameters simulated
by the ecosystem model were used to compute reflectances of the green and dry vegetation, and of the soil. A
simple linear mixture model using the simulated vegetation cover fractions were applied to weight the
contributions of the different components of the landscape reflectances. The latter were then processed through
an atmosphere model to yield observable TOA reflectances. Confrontation with real satellite data showed that
observed NDVI profiles could be well reproduced by model simulations, in phase as well as in amplitude.
A major advantage offered by a methodology centered on an ecosystem processes model is the framework
within which satellite data from different parts of the electromagnetic spectrum may be used complementarity.
Whereas the present study has focused on optical Vis alone, another complementary source of satellite data can
be used to supplement the Vis when the latter perform unsatisfactorily. Microwaves are known to be less prone
to atmospheric perturbations, and still be sensible to changes in vegetation characteristics. Therefore, a study
similar to the present one, using the appropriate physical models, must be carried out on passive and active
microwave products to determine whether their complementarity with optical Vis is feasible and meaningful.
The model up to now runs with standard meteorological data, the most important of which is the daily rainfall.
At term, this point input has to be replaced with a spatialized field derived from remote sensing data. Recent
methods to derive précipitable water from geostationnary meteorological satellite data give reliable estimates
for a time step not shorter than a decade. Here also, a study is prescribed to quantify the consequences of the
rainfall estimation and timing errors on the processes simulations. If the errors are not prohibitive, the model
simulations can be reajusted and constrained via control variables also derived from remote sensing data (Vis,
microwave indices,..). The combined use of different sources of remote sensing data prefigures new problems
related to the spatial scale, time step and nature proper to each of them, and their assimilation in the ecosystem
model. The basis of an assimilation algorithm capable of addressing such problems must therefore be set
ACKNOWLEDGEMENTS
We are indebted to Dr. W. van Leeuwen and Dr. A. Bégué for making available to us parameters to run the soil
reflectance model on sahelian soils. We would also like to thank Dr. G. Dedieu for the SMAC model, Dr. F.
Baret and Dr. S. Jacquemoud for the PROSPECT model. The AVHRR GAC data set was kindly provided by
the Institute for Remote Sensing Applications, JRC, Ispra, Italy.
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