Generating Landslide Susceptibility Maps Using Mathematical Models and UAV data: The Case of Çankırı Region in Türkiye

A. Özçelik, Ender Buğday
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Abstract

Landslides are natural disasters that affect not only residential areas but alos forest ecosystems. In order to determine the areas with high landslide risk and take necessary measures in risky areas, landslides susceptible should analyzed and susceptible map (LSM) should be developed in advance. In this study, a LSM was produced for two study areas with different sizes including Çankırı province and in the Ilısılık Village of Çankırı in Türkiye. Analytical Hierarchy Process (AHP) and Logistic Regression Modeling (LRM) methods were used to generate LSM based on the main factors including elevation, slope, lithology, distance to faults - streams and roads. For Çankırı province, 30 m resolution Digital Elevation Model (DEM) was used to produce the map while one-meter resolution Digital Terrain Model (DTM), generated by using Unmanned Aerial Vehicle (UAV), was used for Ilısılık Village. As a result of the study, AHP model success was calculated as 73.9% and 91.7% for Çankırı and Ilısılık, respectively, considering the previous landslides occurred in the region. On the other hand, LRM model success was 75.2% and 93.1%, respectively. It was also indicated that DTM data is advantageous to DEM data by offering a more precise and detailed usage opportunity. The sensitivity is revealed more clearly and effectively in precision planning studies such as risk mapping of natural disasters that requires special measurement in small areas.
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利用数学模型和无人机数据生成滑坡易感性图:以浙江省 rkiye Çankırı地区为例
山体滑坡是一种自然灾害,不仅影响居民区,而且影响森林生态系统。为了确定滑坡高危险性区域,并对危险区域采取必要的措施,应进行滑坡易感区分析,并提前编制滑坡易感区图(LSM)。在本研究中,对两个不同规模的研究区域,包括Çankırı省和 rkiye的Ilısılık村Çankırı,制作了LSM。采用层次分析法(AHP)和逻辑回归模型(LRM)方法,基于高程、坡度、岩性、距离断层、河流和道路等主要因素生成LSM。对于Çankırı省,使用30米分辨率的数字高程模型(DEM)制作地图,而对于Ilısılık村,使用使用无人机(UAV)生成的1米分辨率数字地形模型(DTM)。研究结果表明,考虑到该地区以前发生过的滑坡,Çankırı和Ilısılık的AHP模型成功率分别为73.9%和91.7%。另一方面,LRM模型成功率分别为75.2%和93.1%。DTM数据相对于DEM数据具有优势,可以提供更精确、更详细的使用机会。在精确规划研究中,例如需要在小范围内进行特殊测量的自然灾害风险测绘,更清楚和有效地揭示了这种敏感性。
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来源期刊
European Journal of Forest Engineering
European Journal of Forest Engineering Agricultural and Biological Sciences-Forestry
CiteScore
1.30
自引率
0.00%
发文量
6
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