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Land is a non-renewable resource and hence assessment of landuse
change in a temporal sequence is essential for planning and development of
land and water resources. Integrated remote sensing and GIS technique
provides excellent information, understanding of the relationships between
different influencing variables and spatial distribution and change of landuse in
a cost-effective manner. In the present study, an integrated remote sensing and
GIS based methodology have been developed and successfully demonstrated
to analyze landuse-groundwater relationship in the Dwarkeshwar watershed,
West Bengal, India. There are four components of this study; (a) to evaluate
the nature of changes in the selected landuse categories, (b) to identify the
factors influencing this change, (c) their role in controlling the groundwater
scenario of the study area and (d) to suggest remedial, measures to improve
the groundwater regime of the area through delineation of the groundwater
potential zones and suitable artificial recharge sites.
The Dwarkeshwar Watershed with a semi-elliptical shape (86°37'E-
87°28'E and 23o00'N-23o32' N) occupies the north central part of the Purulia
district but the major part of it is situated in Bankura district of West Bengal
state, India. The total area of the watershed is 2270 sq.kms. The major river
draining the entire watershed is the Dwarkeshwar river, which is the tributary of
Damodar river. The Dwarkeshwar river originates from the eastern highlands of
Purulia district flows through Bankura district from NW to SE. After leaving
Bankura district it confluences with river Silai (or Silabati), and thereafter it falls
into river Bhagirathi as river Rupnarayan, just before Bay of Bengal.
Physiographically the whole of the watershed forms an intermediate tract
between Chotanagpur plateau in the west and the alluvial plains in the east,
presenting a variety of landforms varying between the dissected plateau in the
west and the undulating alluvial plains in the east. The study area consists of
pink granite and granite gneiss of the Pre-Cambrian Shield of India with a thick
mantle of laterite and older alluvium lying over it. Towards the eastern part of
the area, newer alluviums of recent time basically sand, silt, and clay.
I
The present study is aimed to achieve the following objectives: (i) to
develop an integrated remote sensing and GIS technique to establish and
evaluate the relationship between landuse and groundwater hydrology, (ii) to
identify factors influencing this relationship and their role in controlling the
groundwater scenario of the study area, (iii) to evaluate the nature of changes
in selected landuse categories, (iv) to have a quantitative assessment of
groundwater recharge, (v) to delineate the groundwater potential zones in the
area, (vi) to suggest suitable sites for artificial recharge to augment
groundwater in the study area, and (vii) To develop a software in the form of an
extension to the Arc View 3.x GIS package for immediate extraction of
groundwater related properties of an area.
Three types of data have been used for the present study, namely
remote sensing data, e.g. IRS-1B-LISS-II and IRS-1C-LISS-III data, field data,
e.g. depth of water level, rainfall data, etc. and the existing maps, e.g.,
topographic, geological, geomorphological and soil maps, etc. In order to bring
these into a single spatial georeferencing scheme, all the data have been
registered to the base map, prepared from the Survey of India topographic
maps.
Remote Sensing data (IRS LISS - II and LISS - III) have been
enhanced to extract pertinent information using suitable image processing
techniques. Classified landuse maps have been generated for both the years
1988 and 1996 from the satellite data and landuse change has been
determined with area statistics by subtracting the two images. Thematic
information layers on geology, geomorphology, lineaments, soil and landuse
have been prepared from remote sensing images supported by ancillary data.
Digital Elevation Model has been generated from elevation contour from
topographic maps through interpolation. Automatic extraction of drainage
network has been performed and analysed with other datasets in GIS. Depth of
water level data have been analysed to study in the long-term behaviour of the
water level in the area. Groundwater recharge has been calculated by
Thomthwaite and Mather Model of water balance and specific yield and water
level fluctuation method in GIS environment.
Rainfall data have been analysed and used to estimate runoff depth and
peak discharge for the prioritisation of the watershed using SCS curve number
method. This is used to prioritise the watershed on the basis of runoff
generated due to existing landuse condition and soil type.
Potential soil loss due to erosion for the watershed has been calculated
using USLE (Universal Soil Loss Equation) Model. Moreover, Normalized
Difference Vegetative Index (NDVI) has been calculated from the classified
landuse images for both the years 1988 and 1996 and the NDVI difference
image is generated to identify the change in vegetation cover.
All the information layers have been integrated through GIS analysis and
the criteria for groundwater prospective zones mapping and artificial recharge
site selection have been defined. Each parameter and also each class of the
parameters have been assigned appropriate weights on the basis of their
relative contribution towards the output.
Finally, the changes in groundwater resources are correlated with the
landuse changes. Programs are developed in ArcView Avenue programming
language to create an extension for ArcView 3.1 and 3.2 for immediate
extraction of groundwater potential zones and artificial recharge sites.
In this study, an integrated remote sensing and GIS technique has been
developed for evaluation of landuse groundwater relationship and has been
successfully tested for the Dwarkeshwar Watershed, West Bengal, India. This
study has illustrated that integrated remote sensing and GIS approach is an
appropriate tool for convergent analysis multidisciplinary data sets required for
landuse groundwater relationship studies. |
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