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Identification of critical erosion prone areas in the small agricultural watershed using USLE,GIS and remote sensing
Authors:Ashish Pandey  V. M. Chowdary  B. C. Mal
Affiliation:(1) Department of Agricultural Engineering, NERIST, Nirjuli, Itanagar, Arunachal Pradesh, 791109, India;(2) Regional Remote Sensing and Service Centre, IIT campus, Kharagpur, 721302, India;(3) Department of Agricultural and Food Engineering, IIT, Kharagpur, 721302, India
Abstract:In the present study, Karso watershed of Hazaribagh, Jharkhand State, India was divided into 200 × 200 grid cells and average annual sediment yields were estimated for each grid cell of the watershed to identify the critical erosion prone areas of watershed for prioritization purpose. Average annual sediment yield data on grid basis was estimated using Universal Soil Loss Equation (USLE). In general, a major limitation in the use of hydrological models has been their inability to handle the large amounts of input data that describe the heterogeneity of the natural system. Remote sensing (RS) technology provides the vital spatial and temporal information on some of these parameters. A recent and emerging technology represented by Geographic Information System (GIS) was used as the tool to generate, manipulate and spatially organize disparate data for sediment yield modeling. Thus, the Arc Info 7.2 GIS software and RS (ERDAS IMAGINE 8.4 image processing software) provided spatial input data to the erosion model, while the USLE was used to predict the spatial distribution of the sediment yield on grid basis. The deviation of estimated sediment yield from the observed values in the range of 1.37 to 13.85 percent indicates accurate estimation of sediment yield from the watershed.
Keywords:Erosion  GIS  Prioritization  RS  USLE  Watershed
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