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Landslide susceptibility assessment of SE Bartin (West Black Sea region, Turkey) by artificial neural networks

机译:人工神经网络山体滑坡易感性评估SE Bartin(西黑海域,土耳其)

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Landslides are significant natural hazards in Turkey, second only to earthquakes with respect to economic losses and casualties. The West Black Sea region of Turkey is known as one of the most landslide-prone regions in the country. The work presented in this paper is aimed at evaluating landslide susceptibility in a selected area in the West Black Sea region using Artificial Neural Network (ANN) method. A total of 317 landslides were identified and mapped in the area by extensive field work and by use of air photo interpretations to build a landslide inventory map. A landslide database was then derived automatically from the landslide inventory map. To evaluate landslide susceptibility, six input parameters (slope angle, slope aspect, topographical elevation, topographical shape, wetness index, and vegetation index) were used. To obtain maps of these parameters, Digital Elevation Model (DEM) and ASTER satellite imagery of the study area were used. At the first stage, all data were normalized in [0, 1] interval, and parameter effects on landslide occurrence were expressed using Statistical Index values (Wi). Then, landslide susceptibility analyses were performed using an ANN. Finally, performance of the resulting map and the applied methodology is discussed relative to performance indicators, such as predicted areal extent of landslides and the strength of relation (rij) value. Much of the areal extents of the landslides (87.2%) were classified as susceptible to landsliding, and rij value of 0.85 showed a high degree of similarity. In addition to these, at the final stage, an independent validation strategy was followed by dividing the landslide data set into two parts and 82.5% of the validation data set was found to be correctly classified as landslide susceptible areas. According to these results, it is concluded that the map produced by the ANN is reliable and methodology applied in the study produced high performance, and satisfactory results.
机译:Landslides在土耳其是重大的自然灾害,仅次于经济损失和伤亡的地震。土耳其西黑海地区被称为该国最山体滑坡之一。本文提出的工作旨在使用人工神经网络(ANN)方法评估西黑海域中选定区域的滑坡敏感性。通过广泛的现场工作以及使用空气拍照解释来构建滑坡库存地图,共识别并映射到该地区的317个山体滑坡。然后将山体滑坡数据库自动从滑坡库存地图中派生。为了评估滑坡敏感性,使用了六个输入参数(斜坡角,斜坡方面,地形仰角,覆盖形状,湿度指数,植被指数)。为了获取这些参数的地图,使用了数码高程模型(DEM)和研究区域的哈特卫星图像。在第一阶段,所有数据都在[0,1]间隔中归一化,并且使用统计指标值(Wi)表示对滑坡发生的参数效应。然后,使用ANN进行滑坡易感性分析。最后,相对于性能指标讨论了所得地图和所应用的方法的性能,例如预测山体滑坡的面积和关系强度(RIJ)值。山体滑坡的大部分面积(87.2 %)被归类为易受血岭的影响,并且RIJ值为0.85显示出高度相似性。除此之外,在最终阶段,将划分为两个部分的独立验证策略,并发现82.5%的验证数据集被正确归类为滑坡易感区域。根据这些结果,得出结论是,ANN生产的地图是可靠的,并且在研究中应用的方法产生了高性能,结果令人满意。

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