2 MOTIVATION
Clean, potable water is a requirement for all land-
based biological activity. However, in the past few
years, there is a decreasing amount of water avail-
able for humans to consume because of multitude of
factors such as unpredictable rainfall, droughts, over-
utilization of wells, inefficient farming techniques,
etc.
Most of Maharashtra faces drought crisis during
the monsoon season. The drought in 2013 was con-
sidered as the region’s worst drought in 40 years. The
worst-hit areas in Maharashtra were Solapur, Parb-
hani, Sangli, Pune, Satara, Beed and Nashik. Beed,
a district in central Maharashtra, suffers with a seri-
ous drought crisis. In 2015, Beed (G Seetharaman,
2016) received less than 50 per cent of its average an-
nual rainfall of 670 mm. The previous year had only
been slightly better with 55.6 per cent of the average
rainfall. This has affected the groundwater level in
the district. Beed, along with Osmanabad and Latur,
is the most waterstarved in the Marathwada region
where the state government has declared droughtlike
conditions. According to a recent Press Trust of In-
dia report (Press Trust of India, 2016), there is only 5
per cent water in Marathwada’s dams. Beed collector
Ram says the government spent around Rs 80 crore in
2015-16 on water conservation projects in the district.
In 2018 (TNN, 2018), districts in the state have been
declared as drought-prone.
Hence, we introduce simulation based modelling
and optimization, to increase the efficiency, and water
harvesting capacity of these efforts. The system can
potentially play an important part in making appro-
priate decisions to lay out water-harvesting resources,
and thus increase the amount of water available to
people.
3 REVIEW OF LITERATURE
This paper (Jasrotia et al., 2009) suggests a study of
the water resources. The water balance study using
the Thornthwaite and Mather (TM) models with the
help of remote sensing and GIS found out the mois-
ture deficit and moisture surplus for an entire water-
shed. It showed that the maximum annual runoff re-
sulted from the built-up areas/water body followed by
agricultural land, dense forest and minimum for the
barren land and open forest. GIS software had been
used for spatial analysis of various thematic layers
and integration to produce the final runoff map. Af-
ter the runoff map was produced, it was found that
suitable sites for rainwater harvesting structures ac-
counted only for a fraction of the actual watershed
area whereas the rest of the area was unsuitable site
for rainwater harvesting.
This paper (Mahmoud and Alazba, 2014). says
that the very first step in rainwater harvesting is to
trap the rainfall where it falls. To accomplish this, a
geographic information system (GIS ) based decision
support system (DSS) was implemented, which fo-
cused on developing a methodology to suggest poten-
tial sites for in-situ water harvesting (IWH) consid-
ering factors such as rainfall, slope, potential runoff
coefficient (PRC), land cover/use, and soil texture.
Another research study made use of GIS and Re-
mote Sensing to delineate potential sites for rain-
water harvesting. This methodology (Kumar et al.,
2008). carried out their research in the districts of Ut-
tar Pradesh. They used thematic maps consisting of
land-use/land-cover, geomorphology as layers along
with geology and drainage integrated with the GIS
system. The maps were weighted by importance and
multiplied with the ranked features of each site. An
average score for each of the features was obtained
and integrated into the GIS system for inference.
Here, (Ziadat et al., 2012) applied a GIS approach
for identifying the suitability for rainwater harvesting
interventions in Jordan. They integrated biophysical
criteria such as slope, vegetation cover, soil texture,
and soil depth with socio-economic parameters such
as land owner and then modified the criteria. Each
criterion was assigned one of two ratings: best or sec-
ond best. These ratings provided more flexibility for
determining the suitability of an intervention.
This paper (Naseef and Thomas, 2016) used the-
matic maps and soil cover to determine optimum lo-
cations for rainwater harvesting in the state of Ker-
ala near the Kechri river basin. Aster Digital Eleva-
tion Model (DEM), Rainfall data are needed for this
study. Daily rainfall data of all stations situated in and
near Kecheri river basin was obtained. The thematic
maps used in this study are Landuse map, Classified
slope map, Stream order map, Runoff potential map
and Soil permeability map.An overlay of these fea-
tures is obtained using an appropriate GIS system to
get the desired locations.
4 METHODOLOGY
The system consists of two major components, that
need to be related. The features of the terrain are pro-
cessed, along with perennial stream networks to de-
termine watershed regions, and their capacity. Data
about soil type and quality is factored in to ensure
that i) regions with less porous soil are used to reduce
Optimization of Rainwater Harvesting Sites using GIS
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