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Development of two artificial neural network methods for landslide susceptibility analysis

机译:山体滑坡易感性分析的两个人工神经网络方法的发展

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The purpose of this study is to develop landslide susceptibility analysis techniques using artificial neural networks and to apply the newly developed techniques for assessment of landslide susceptibility to the study area of Yongin in Korea. Landslide locations were identified in the study area from interpretation of aerial photographs, field survey data, and a spatial database of the topography, soil type and timber cover were constructed. The landslide- related factors such as topographic slope, topographic curvature, soil texture, soil drainage, soil effective thickness, timber age, and timber diameter were extracted from the spatial database. Using those factors, landslide susceptibility and weights of each factor were analyzed by two artificial neural network methods. In the first method, the landslide susceptibility index was calculated by the back propagation method which is a type of artificial neural network method. Then, the susceptibility map was made with a GIS program. The results of the landslide susceptibility analysis were verified using landslide location data. The verification results show satisfactory agreement between the susceptibility index and existing landslide location data. In the second method, weights of each factor were determinate d. The weights, relative importance of each factor, were calculated using importance-free characteristics method of artificial neural networks. After the calculating of the weight, the slope had the highest value.
机译:本研究的目的是利用人工神经网络开发滑坡易感性分析技术,并应用新开发的技术,以评估韩国永宁研究区的滑坡敏感性。从地形拍摄,现场调查数据和地形,土壤类型和木材覆盖的空间数据库中,在研究区域中确定了山体滑坡位置。从空间数据库中提取了地形边坡,地形曲率,土壤纹理,土壤有效厚度,木材增长和木材直径等山体滑坡相关因素。使用两种人工神经网络方法分析了使用这些因素,滑坡易感性和每个因素的重量。在第一种方法中,通过作为一种人工神经网络方法的后传播方法计算滑坡敏感性指标。然后,使用GIS程序进行易感性图。使用滑坡位置数据验证了滑坡易感性分析的结果。验证结果显示了易感性指数和现有滑坡位置数据之间的令人满意的一致性。在第二种方法中,每个因素的重量是确定的d。利用人工神经网络的可自由特征方法计算重量,每个因素的相对重要性。在计算重量之后,斜率具有最高值。

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