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Landslide susceptibility mapping at Dodangeh watershed, Iran, using LR and ANN models in GIS

机译:Dodangeh流域,伊朗的Landslide易感性映射,在GIS中使用LR和ANN模型

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Landslide is among the most common geologic hazard around the world. They cause many formidable damages and numerous deaths annually. There are multiple causes for every landslide. Landslide causes are classified into three categories, namely, physical, natural, and human. Maps are a valuable and appropriate tool for presenting information on landslide. Landslide susceptibility maps is one of the most useful source of information for landuse planners. A landslide susceptibility map represents zones that have the potential for landslide. These zones are identified by correlation between the past distribution of landslide occurrence and conditioning factors that contribute to landslide. This study employs logistic regression (LR) and artificial neural networks (ANN) models to assess landslide susceptibility in Dodangeh Watershed, Mazandaran Province, Iran. The spatial database included landslide inventory, altitude, slope angle and aspect, plan and profile curvatures, distance from faults and from stream, stream power index (SPI), topographic wetness index (TWI), sediment transport index (STI), terrain roughness index (TRI), landuse and lithology. Validation of the models using receiver operating characteristics and overall accuracy indicates that both models display satisfactory performance, and LR model exhibits the most stable and best performance. Given the outcomes of the study, the LR model, which has an AUC value of 0.872 and an overall accuracy of 82.59%, and the ANN model, which has a AUC value of 0.77 and an overall accuracy of 71% are promising techniques for landslide susceptibility mapping.
机译:Landslide是世界各地最常见的地质危害之一。他们每年造成许多强大的损害和许多死亡。每个滑坡都有多种原因。 Landslide原因分为三类,即物理,自然和人类。地图是一个有价值的和适当的工具,用于在滑坡上呈现信息。 Landslide易感性图是土地使用者策划者最有用的信息来源之一。滑坡敏感性图代表了具有滑坡潜力的区域。这些区域通过山体滑坡发生的过去分布与有助于滑坡的调理因子之间的相关性来鉴定。本研究采用了物流回归(LR)和人工神经网络(ANN)模型来评估Dodangeh流域,Mazandaran省,伊朗的滑坡易感性。空间数据库包括滑坡库存,高度,斜坡角度和方面,计划和轮廓曲率,距离故障和流,流电源指数(SPI),地形湿度指数(TWI),沉积物传输指数(STI),地形粗糙度指数(三),土地利用和岩性。使用接收器操作特性和总体精度验证模型表明两种型号显示令人满意的性能,而LR模型则表现出最稳定和最佳性能。鉴于研究结果,LR模型,AUC值为0.872,总精度为82.59%,ANN模型,AUC值为0.77,总精度为71%是滑坡的有希望的技术技术易感性映射。

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