Abstract:
Water is an important natural resource for life, agriculture, forestry,
navigation, irrigation, power generation etc. Over the years, its demand is
rising due to rapid growth in population, industry and urban areas. Therefore, it
is necessary to know the availability of water in an area for its proper
management and utilization. The modern technique of remote sensing,
integrated with a Digital Elevation Model (DEM), can be used for the estimation
of runoff from a catchment, accurately and efficiently. The present research
work, thus, focusses on the estimation of runoff, and various hydrologic
processes using Watershed Module of Strathclyde River Basin Model (SRBM).
The main objectives of the research work are (i) to identify and assess
those hydrologic parameters which can be derived from satellite data and
DEM, for runoff generation (ii) integration of remote sensing, DEM, and
hydrometeorological data into a hydrologic model in order to compute daily
runoff, and (iii) to study the sensitivity of input parameters of the model in
relation to runoff and identify the important parameters.
The study area covers a part of Giri river catchment upto Yashwant Nagar,
lying between latitudes 30° 45'N to 31°30'N and longitudes 77° 00'E to
77° 45'E, ranging in elevation from 900m to 3300m above m.s.l. Topographical
maps no. 53E and 53F , IRS LISS I digital data of year 1989 and available
meteorological data such as rainfall, evaporation and runoff of the catchment
are the various data products used to carry out this study.
The SRBM model used here is based on Stanford Watershed Model with
modifications to watershed segmentation on the basis of elevation range. The
primary input data required by the model are hourly or daily precipitation, daily
evaporation and daily runoff data. The entire work has been divided into
three components i.e. (i) Development of DEM and its application, (ii) Analysis
of remote sensing data and (iii) Runoff simulation using SRBM model
Contours from topographic maps at 200m interval have been digitized to
generate a DEM at 500m grid size, using interpolation module of ILWIS
(ii)
(Integrated Land and Water Information System). The depressions in the
DEM have been filled by the lowest elevation present at the rim of the pit.
The depressionless DEM is then used for catchment segmentation and
computation of slope, flow direction, flow accumulation and overland flow
length data.
Flow directions have been computed using flow line approach where flow
direction of the previous cell identifies the next cell to be processed. Channel
network has been obtained using criteria of minimum contributing area to form
a channel. An area equal to 0.75 km . has been found as the threshold value
to get a channel network, which is comparable to the channel network shown
on topographic maps. This channel network is used to compute flow path
slope and overland flow length for each segment as well as for the entire
catchment, as required by the model.
The land use information has been extracted from IRS LISS I data using
image processing module of ILWIS system, implying Unsupervised
clustering technique. Four classes are spectrally separated out, viz. thick
forest, thin forest, cultivation and grass land. The overall classification
accuracy has been achieved 89%. Interception and Potential Evapotranspiration
from Lower Zone parameters have been obtained from landuse data, using area
weighted technique for each segment as well as for the entire catchment.
The study has been carried out for two different situations. In first
situation, the catchment has been divided into three segments according to
their elevation range, i.e., segment 1 is above 2300m, segment 2 is between
1600m to 2300m and segment 3 is below 1600m. In another situation the entire
catchment has been considered homogeneous.as one segment.
The values of uniformly distributed rainfall for each segment have been
computed using Thiessen Polygon Method. Thus, raingauge adjustment factor
in the SRBM model may now be considered as redundant. The parameters
of SRBM model have been calibrated for runoff volume for year 1989 using
measured runoff values. The calibrated values have been used to compute runoff for years 1991 and 1992 and compared with the measured values to validate
the model. The measured and simulated daily flow volume at outlet have been
(iii)
found to have correlation coefficient varying between 0.991 to 0.999, variance
of residual between 4 to 42, and explained variance between 92% to 99%.
Sensitivity analysis of the model parameters has been carried out
segmentwise on 1989 data, by changing the value of parameters upto ±30%. It is
found that the runoff is more sensitive for lower zone soil moisture and
ground water recession parameters as compared to infiltration and interflow
indices.
It is concluded that the model can be effectively utilized to estimate
runoff by integrating it with DEM and remote sensing data. Further, it is found
that the segmentation of the catchment improves the computed runoff values
when compared with entire catchment as a single homogeneous unit. The
proposed model is found to be very sensitive for lower zone soil moisture, hence
the value of this parameter requires to be estimated with great care. As the
results are found to be promising, the model can be applied to ungauged
catchments, with similar environmental and land conditions.