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http://dx.doi.org/10.11108/kagis.2022.25.2.072

Analysis and Management of Potential Development Area Using Factor of Change from Forest to Build-up  

LEE, Ji-Yeon (Korea University Environmental Science & Ecological Engineering)
LIM, No-Ol (Korea University Environmental Science & Ecological Engineering)
LEE, Sung-Joo (Korea Environment Institute, Environmental Assessment Group)
CHO, Hyo-Jin (Korea University Environmental Science & Ecological Engineering)
SUNG, Hyun-Chan (Korea University OJEong Resilience Institute)
JEON, Seong-Woo (Korea University Environmental Science & Ecological Engineering)
Publication Information
Journal of the Korean Association of Geographic Information Studies / v.25, no.2, 2022 , pp. 72-87 More about this Journal
Abstract
For the sustainable development and conservation of the national land, planned development and efficient environmental conservation must be accompanied. To this end, it is possible to induce development and conservation to harmonize by deriving factors affecting development through analysis of previously developed areas and applying appropriate management measures to areas with high development pressure. In this study, the relationship between the area where the land cover changed from forest to urbanization and various social, geographical, and restrictive factors was implemented in a regression formula through logistic regression analysis, and potential development sites were analyzed for Yongin City. The factor that has the greatest impact on the analysis of potential development area is the restrict factors such as Green Belt and protected areas, and the factor with the least impact is the population density. About 148km2(52%) of Yongin-si's forests were analyzed as potential development area. Among the potential development sites, the area with excellent environmental value as a protected area and 1st grade on the Environment Conservation Value Assessment Map was derived as about 13km2. Protected areas with high development potential were riparian buffer zone and special measurement area, and areas with excellent natural scenery and river were preferred as development areas. Protected areas allow certain actions to protect individual property rights. However, there is no clear permit criteria, and the environmental impact of permits is not understood. This is identified as a factor that prevents protected areas from functioning properly. Therefore, it needs to be managed through clear exception permit criteria and environmental impact monitoring.
Keywords
Land Cover; Logistic Regression Model; Geographic Information System; Potential Development Area;
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Times Cited By KSCI : 3  (Citation Analysis)
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