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http://dx.doi.org/10.13087/kosert.2022.25.5.1

Assessing the Landslide Susceptibility of Cultural Heritages of Buyeo-gun, Chungcheongnam-do  

Kim, Jun-Woo (Major in Landscape Architecture, Cheongju University)
Kim, Ho Gul (Dept. of Human Environment Design, Major in Landscape Urban Planning, Cheongju University)
Publication Information
Journal of the Korean Society of Environmental Restoration Technology / v.25, no.5, 2022 , pp. 1-13 More about this Journal
Abstract
The damages caused by landslides are increasing worldwide due to climate change. In Korea, damages from landslides occur frequently, making it necessary to develop the effective response strategies. In particular, there is a lack of countermeasures against landslides in cultural heritage areas. The purpose of this study was to spatially analyze the relationship between Buyeo-gun's cultural heritage and landslide susceptible areas in Buyeo-gun, Chungcheongnam-do, which has a long history. Nine spatial distribution models were used to evaluate the landslide susceptibility, and the ensemble method was applied to reduce the uncertainty of individual model. There were 17 cultural heritages belonging to the landslide susceptible area. As a result of calculating the area ratio of the landslide susceptible area for cultural heritages, the cultural heritages with 100% of the area included in the landslide susceptible area were "Standing statue of Maae in Hongsan Sangcheon-ri" and "Statue of King Seonjo." More than 35% of "Jeungsanseong", "Garimseong", and "Standing stone statue of Maitreya Bodhisattva in Daejosa Temple" belonged to landslide susceptible areas. In order to effectively prevent landslide damage, the application of landslide prevention measures should be prioritized according to the proportion belonging to the landslide susceptible area. Since it is very difficult to restore cultural properties once destroyed, preventive measures are required before landslide damage occurs. The approach and results of this study provide basic data and guidelines for disaster response plans to prevent landslides in Buyeo-gun.
Keywords
Landslide hazard area; Machine learning model; Ensemble model; Disaster preventon;
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