Data collection was conducted during the period of June 10 through June 18, 1992. The observations
followed a period of very heavy rains over several weeks that ended on June 9. As a result, the initial
conditions were typically saturated soils with standing water quite common. No rainfall occurred during the
experimental period thus allowing the observation of drying conditions.
4.2. Brightness Temperature Mapping
ESTAR data were geolocated using ground control points identified from the aircraft video records. These
tapes were reviewed using 1:24,000 scale maps and image data (SPOT and NS001) to determine time coverage
of numerous points on each line. These points were then digitized (UTM coordinates) and recorded with the
times. Due to the numerous road intersections in the region, the georeferencing accomplished using this method
is considered to be quite accurate. Also, with the visual guidance the road network provided, the pilots were
able to reproduce the same flightlines each day, thus yielding complete and contiguous coverage on each date.
These data were then corrected for angular variations and resampled to a uniform grid. Figure 2
includes gray scale brightness temperature images for each day. The pattern of variation exhibits a spatial
structure that appears to be correlated to the soil texture (Jackson and Schiebe, 1993). The temporal change in
brightness temperature between these dates retains the textural distinction.
4.3. Large Scale Prediction of Soil Moisture
As a first step in the Washita'92 ESTAR calibration and verification of the passive microwave - soil moisture
algorithms, we examined the data on a watershed average basis. All of the soil moisture samples collected on
a given day (nominally 350 points) were averaged for the study area. This same procedure was used for the
200 m resolution brightness temperature data (nominally 20,000 cells) which were then converted to an
emissivity estimate by normalizing with the averaged soil temperature data. This results in one pair of
emissivity and soil moisture of the eight days. These values are plotted in Figure 3.for each of the eight days.
A passive microwave simulation model (Jackson, 1993) was used with estimates of roughness and
vegetation parameters to predict a soil moisture-emissivity relationship for the two dominant soil types in the
watershed. The soil dielectric model used here is that described in Wang and Schmugge (1980). Comparing
these relationships to the observations, we see a very close correspondence to the silt loam function. These
preliminary results indicate that the data interpretation algorithms apply within this region. It is also interesting
that even when the data is averaged over the entire area (740 km 2 ) the algorithms appear to apply.
For comparison purposes, the data collected in the Arizona experiment have been included in Figure
3. All of these data were averaged in the same manner as that described above. Both the 1990 PBMR and
1991 ESTAR data are included. These results appear to follow a different functional relationship associated
with a sandy soil and sparser vegetation cover, which were prevalent.
5 - SUMMARY
The ESTAR L band radiometer was evaluated for soil moisture mapping applications over the semiarid
rangeland Walnut Gulch watershed located in southeastern Arizona and a larger watershed in a subhumid area
of Oklahoma. Microwave brightness temperature data were used in conjunction with a microwave emission
model to predict soil moisture and compared to ground observations of soil moisture. A second verification was
conducted using an extensive data set collected with the PBMR radiometer. Both tests showed that the ESTAR
is capable of providing soil moisture with the same level of accuracy as existing systems. Preliminary results
of a large scale passive microwave study to map surface soil moisture were presented. Comparisons of model
predictions and watershed averaged observations of the emissivity - soil moisture relationship showed close
agreement indicating the reliability of the model in data interpretation and the validity of extending it to very
large areas. These results show that the ESTAR is capable of providing the necessary data for soil moisture
applications.
6 - REFERENCES
Allen, P. B. and Naney, J .W., 1991. Hydrology of the Little Washita River Watershed, Oklahoma: data and
analyses. USDA, ARS-90, 74pp.