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http://dx.doi.org/10.11108/kagis.2011.14.4.063

Development of Soil Erosion Analysis Systems Based on Cloud and HyGIS  

Kim, Joo-Hun (Water Resources Research Div., KICT)
Kim, Kyung-Tak (Water Resources Research Div., KICT)
Lee, Jin-Won (River.Coastal and Harbor Research Div., KICT)
Publication Information
Journal of the Korean Association of Geographic Information Studies / v.14, no.4, 2011 , pp. 63-76 More about this Journal
Abstract
This study purposes to develop a model to analyze soil loss in estimating prior disaster influence. The model of analyzing soil loss develops the soil loss analysis system on the basis of Internet by introducing cloud computing system, and also develops a standalone type in connection with HyGIS. The soil loss analysis system is developed to draw a distribution chart without requiring a S/W license as well as without preparing basic data such as DEM, soil map and land cover map. Besides, it can help users to draw a soil loss distribution chart by applying various factors like direct rain factors. The tools of Soil Loss Anaysis Model in connection with HyGiS are developed as add-on type of GMMap2009 in GEOMania, and also are developed to draw Soil Loss Hazard Map suggested by OECD. As a result of using both models, they are developed very conveniently to analyze soil loss. Hereafter, these models will be able to be improved continuously through researches to analyze sediment a watershed outlet and to calculate R value using data of many rain stations.
Keywords
Prior Disaster Influence Estimation; Cloud Computing; HyGIS; RUSLE;
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