1091
isy observations, for 50
g C m-2 year -1 instead
dard deviations of the
improved (in amplitude
the first guess. Theses
m statistically finds the
knowledge-based link
i when high LAI values
lei, can easily generate
;rvations. We therefore
lization. The first guess
3/4166 °Cfor2^2
ults of adjustment to a
found, but the simplex
;nt methods: systematic
highlights the irregular
o be possible, for this
ssimiladon can improve
ions were not addressed
xuracy of reflectances
measurements are not
a prognostic vegetation
approach in the field of
questions. The method
s direct modelling from
te biophysical variable,
nodel course and these
method should lead to
reflectance models has
natural vegetation and
strategies which can be
ing in the observations,
devoted to the analysis
model and 'observation'
e data set may contain
at cost functions can be
it priori weights to the
rge error in modelling
nal reflectance. These
g information. A priori
it function, the specific
>n of noise observation
led surface-atmosphere
reflectance model and climatologies as inputs. We can also notice that vegetation indices, designed to reduce
perturbations, can be assimilated as well.
LAI inversion requires a strong filtering of the radiometric measurements. These filters are based on a priori
knowledge (for example Maximum Value Composite of NDVI, Holben 1986). In particular, recent methods
assume a minimum time for canopy decrease and regrowth. Clearly, this a priori knowledge is given by the
vegetation model, in the 'model to satellite' approach. Besides, it allows to take into account measurements
that should have a better statistical relevance than a composite method, which select one datum over a
prescribed time period (sometimes more than one observation could be use, sometimes they all should be
rejected). However, it requires accurate direct modelling of reflectances, and therefore LAI and optical
properties temporal profiles. Development of LA/meter measurements and long term biomass sampling
coupled with temporal series of ground radiometric measurements are expected to result in better
understanding and modelling of canopy behavior for natural ecosystems.
Modelling the structure of vegetation canopies and their seasonal variations is a critical issue a) for carbon
cycle assessment, b) for coupling with satellite data but also c) for climate researches (Pielke et al. 1993). In
this study, we focused on seasonal vegetation and satellite measurements in the solar spectrum. Therefore, for
global scale applications, savannahs, steppes and deciduous forests ecosystems are natural candidates for
vegetation model control by satellite observations. Moreover, the first information which is expected concerns
phenology modelling. Besides, inclusion of measurements from other sensors or wavelengths is
straightforward, for example by adding properly weighted terms in the cost function, as soon as accurate
forward modelling from vegetation to satellite exists. Water in plant and soil, latent heat fluxes, canopy
biomass, structure and temperature have been related to microwave and thermal infrared measurements (e.g.
Kerr and Njoku 1993).
Finally, we would like to outline that the development of vegetation models and assimilation of satellite data
should proceed in close connection, because the control strategy requires accurate analysis of the model errors,
to determine the control variables for instance.
AKNOWLEDGEMENTS
This work was carried out at the Laboratoire d'Etudes et de Recherches en Télédétection Spatiale (LERTS) as
part of the European project "The global Carbon Cycle and its perturbation by man and climate. Part H:
Biosphere", supported by the Environment program of the Commission of the European Communities. Laurent
Kergoat is supported by CNRS-INSU
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