1171
Fig. 3: accuracy of soil moisture estimation from
ERS-1 a° backscattering coefficient.
4. COMBINE USE OF RADAR AND THERMAL DATA
4.1. Theory and method
Fig. 4: general scheme of the approach.
The letters (a), (b) and (c) refer to
the three models described below.
4.1.1 Sensible heat flux model: as shown in Fig. 4 (a), the sensible heat flux is estimated here according to a
two-layer formulation model as proposed by Shuttleworth and Wallace (1985), since the classical one layer
approach is not designed to take into account aerodynamic exchanges between soil and vegetation over sparse
canopy unless some extra-modelling (kB-1 method, Prevot et al., 1993a). This model is based on a system of
temperatures and resistances between soil, vegetation and air mass, controlling sensible heat fluxes between
each component:
T-T T-T
— - + — -
1 r a r o
1 + -2-+-2-
r r.
(W/m 2 )
(5)
where a, c and s indices correspond respectively to air, canopy and soil temperatures and T and r stand for
temperature and aerodynamic resistance. In addition to these input variables, aerodynamic resistances
calculation needs wind speed values and some classical vegetation properties concerning roughness estimates:
mean height, LAI and fraction cover.
4.1.2 Soil temperature model: {Fig. 4 part (b)) numerous studies demonstrated the strong dependence of the
actual to potential soil evaporation ratio (E/Ep) upon soil surface resistance or more simply upon top surface
soil moisture (Deardorff, 1977; Chanzy et al., 1993). Moreover, soil temperature is linearly related to this ratio