in June 10-13,
s show higher
oam, and clay
98°15" 580000m E. 59 oo' 600000m E. *50'W
'N u0000/ BE
38 70000m N.
®353°N
‘N WO0009BE N.SSebE
3860000n N.
7
N.0S.PE
98°15’W 0000 4 00* 97°50°W
UTM Zone 14N Clarke 1866 (NAD 27) 580000 x 59 600000n E.
= Sand : Loam Quarries/Urban
N | Loamy Fine Sand SS Silt Loam Gypsum
DZ Fine Sandy Loam THAT Clay Loam Water
Figure 7. Map of soil texture for the Little Washita Watershed. Source: MAIDS database.
experiment. This is an important observation hydraulic conductivity. The long term potential
from the hydrologic research perspective, in that of the observations of the present study are
it demonstrates that the temporal changes in soil derivation of soil properties on a regional and
moisture can be related to soil hydraulic continental scale from space borne remote
properties. The relative rate of change of soil sensing platforms for input into mesoscale
moisture can, therefore, be employed as an models and global circulation models.
indicator of the soil type; i.e., under similar
conditions, a sandy soil dried (decrease in soil
moisture) more rapidly than a clay soil. 5. CONCLUSIONS
Transition areas between sandy and clayey soils
are characterized by strong hydraulic gradients
(very close contours in figure 6), which Moisture content in the surface layer of
identifies hydrologically active areas where soil the soil is important for hydrologic research.
moisture movement occurs. Microwave remote sensing was employed to
obtain spatial and multi-temporal soil moisture
data for the Little Washita watershed. As part of
Above observations have a significant the Washita'92 airborne campaign during June
potential to employ remotely sensed soil 10-18, 1992, the ESTAR instrument was flown
moisture data organized in a GIS to derive soil each day (except June 15, 1992, the crew rest
properties. Ahuja et al. (1993) established that day) which provided multi-temporal brightness
the two-day drainage data can be related to the temperature data at a spatial resolution of 200 m
saturated hydraulic conductivity. Therefore, x 200 m. The brightness temperature data were
remotely sensed soil moisture data obtained at a converted into soil moisture information. The
temporal resolution of two days can be used to data sets were georeferenced in a raster-based
generate soil hydraulic conductivity (Mattikalli GIS to monitor and quantify spatial and
et al., 1995b). On these lines, further research temporal variability of surface soil moisture.
has been carried out to estimate sub-surface soil Analysis of soil moisture changes and soils data
properties from remotely sensed observations. In reveals a direct relationship between changes in
this research, a state-of-the-art hydrologic model soil moisture and soil texture. This observation
and a GIS have been employed to carryout soil leads to the estimation of soil hydraulic
moisture simulation studies (Mattikalli et al., properties using temporal soil moisture data.
1995c). Strong relationships have been The present research demonstrates that a GIS is a
developed between the changes in surface (0-5 valuable tool to establish relationship between
cm) soil moisture and the sub-surface (for temporal changes in remotely sensed surface soil
various depths from 0 to 60 cm) saturated moisture and soil properties. Further extensive
51