2016
DOI: 10.1007/s10661-016-5143-4
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Spatial and temporal estimation of soil loss for the sustainable management of a wet semi-arid watershed cluster

Abstract: The ungauged wet semi-arid watershed cluster, Seethagondi, lies in the Adilabad district of Telangana in India and is prone to severe erosion and water scarcity. The runoff and soil loss data at watershed, catchment, and field level are necessary for planning soil and water conservation interventions. In this study, an attempt was made to develop a spatial soil loss estimation model for Seethagondi cluster using RUSLE coupled with ARCGIS and was used to estimate the soil loss spatially and temporally. The dail… Show more

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Cited by 30 publications
(14 citation statements)
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“…Recently, there have been many studies of watershed decision-making support systems designed for various purposes, such as water supply (Koutsoyiannis et al 2003;Ghahraman and Sepaskhah 2004;Chung et al 2008), soil conservation (Rahman et al 2009;Markose and Jayappa 2016;Rejani et al 2016), pollution (Djodjic et al 2002;Santhi et al 2006;Ouyang et al 2007), sustainable resource development (Smith et al 2003;Prodanovic and Simonovic 2010;Weng et al 2010;Mocanu et al 2013), the impact of land-use change (Engel et al 2003;Mango et al 2011), and stakeholder analysis in integrated watershed management (Luyet et al 2012;Mutekanga et al 2013). User-friendly decision support systems (DSS) are needed to help watershed managers and planners develop, understand, and evaluate alternative watershed management strategies, while accounting for the interests and goals of several stakeholders (Loucks et al 2005).…”
Section: Multi-level Social-ecological System Analysismentioning
confidence: 99%
“…Recently, there have been many studies of watershed decision-making support systems designed for various purposes, such as water supply (Koutsoyiannis et al 2003;Ghahraman and Sepaskhah 2004;Chung et al 2008), soil conservation (Rahman et al 2009;Markose and Jayappa 2016;Rejani et al 2016), pollution (Djodjic et al 2002;Santhi et al 2006;Ouyang et al 2007), sustainable resource development (Smith et al 2003;Prodanovic and Simonovic 2010;Weng et al 2010;Mocanu et al 2013), the impact of land-use change (Engel et al 2003;Mango et al 2011), and stakeholder analysis in integrated watershed management (Luyet et al 2012;Mutekanga et al 2013). User-friendly decision support systems (DSS) are needed to help watershed managers and planners develop, understand, and evaluate alternative watershed management strategies, while accounting for the interests and goals of several stakeholders (Loucks et al 2005).…”
Section: Multi-level Social-ecological System Analysismentioning
confidence: 99%
“…Its value varies from 0 to 1, for good conservation practice to poor conservation practice. For the proposed study, the P factor was derived from the land use, land cover map and the support practices, followed in the selected area (Reddy et al, 2005;Rejani et al, 2016). In the selected semi-arid watershed area, contour cultivation has been followed as a soil conservation method and hence the value of P factor was considered as 0.39.…”
Section: Conservation Practice Factor (P)mentioning
confidence: 99%
“…Earlier researchers have used various models for estimating soil loss at catchment, regional and global scales such as Universal Soil Loss Equation (USLE), Revised Universal Soil Loss Equation (RUSLE), Water Erosion Prediction Project (WEPP), Soil and Water Assessment tool (SWAT), Agricultural Non-Point Source Pollution Model (AGNPS).The RUSLE has been widely adopted for soil loss estimation at the watershed scale, because of its convenience in computation and application (Balasubramani et al, 2015).Although, it is an empirical model, the combined use of remote sensing, Geographical Information System (GIS) and RUSLE techniques makes soil erosion estimation and its spatial distribution feasible within reasonable costs and better accuracy, in larger areas (Rejani et al, 2016).RUSLE computes the average annual soil loss from the catchment using factors, such as rainfall runoff erosivity (R), soil erodibility (K), topography(LS), cover management(C) and conservation practice(P).The present study focuses on the estimation of spatial and temporal variation of C-factor and soil erosion in a semi-arid watershed of Mahabubnagar district, using RUSLE coupled with GIS and its application, for the sustainable management of the watershed.…”
Section: Introductionmentioning
confidence: 99%
“…In recent years, numerous researchers have shown interest in applying geographical information system (GIS) and remote sensing imagery to the extraction of land surface parameters [6], which, if applied to hydrological models, can be useful to obtain reasonable results-especially in ungauged basins [7]. Incorporating processed satellite data within hydrological models has become a promising approach for better and accurate quantifications of water resources in river basins [8,9].…”
Section: Introductionmentioning
confidence: 99%