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http://dx.doi.org/10.17663/JWR.2016.18.3.226

Land Generated Waste Load Unit Estimation Based on Land Use Map with LP Optimization  

Park, Kyung Ok (Water Environment Research Department, National institute of Environmental Research)
Lee, Chang Hee (Department of Renewable Energy Resources, Jungwon University)
Publication Information
Journal of Wetlands Research / v.18, no.3, 2016 , pp. 226-231 More about this Journal
Abstract
Land Generated Waste Load Unit(LGWLU) estimation based on land use data is required to understand the impact of land use on water quality. The method of estimating LGWLU based on the monitoring data requires a lot of time and manpower. In this study, we propose a method of land pollution unit load estimation based on land use data with LP optimization. Optimization is the process to obtain the best possible optimal solution in a given condition. This study carried out optimization by using excel solver in Microsoft Excel. This study derived LGWLU of BOD, T-N, T-P in Gongju-Si and Seocheon-Gun by using the 2012 land use map made by ministry of environment based on 2010 satellite image. This study about LGWLU estimation is expected to be able to determine more clearly the water pollution caused by land use changes.
Keywords
Land Generated Waste Load Unit; Land use; Optimization; Linear Programming;
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Times Cited By KSCI : 1  (Citation Analysis)
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