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Landslide Susceptibility Mapping Using Artificial Neural Network in the Urban Area of Senise and San Costantino Albanese (Basilicata, Southern Italy)

机译:使用人工神经网络在Senise和San Costantino Albanese(意大利南部巴斯利卡塔)市区进行滑坡敏感性测绘

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Landslides are significant natural hazards in many areas of the world. Mapping the areas that are susceptible to landslides is essential for a wise territorial approach and should become a standard tool to support land-use management. A landslide susceptibility map indicates landslide-prone areas by considering the predisposing factors of slope failures in the past. In the presented work, we evaluate the landslide susceptibility of the urban area of Senise and San Costantino Albanese towns (Basilicata, southern Italy) using an Artificial Neural Network (ANN). In order, this method has required the definition of appropriate thematic layers, which parameterize the area under study. To evaluate and validate landslide susceptibility, the landslides have been randomly divided into two groups, each representing the 50% of the total area subject to instability. The results of this research show that most of the investigated area is characterized by a high landslide hazard.
机译:滑坡是世界许多地区的重大自然灾害。绘制易受滑坡影响的区域的地图对于明智的领土方法至关重要,并且应成为支持土地使用管理的标准工具。滑坡敏感性图通过考虑过去发生边坡破坏的易感因素来指示滑坡易发地区。在提出的工作中,我们使用人工神经网络(ANN)评估了Senise和San Costantino Albanese城镇(意大利南部的巴斯利卡塔)市区的滑坡敏感性。因此,此方法需要定义适当的主题层,这些主题层可对研究区域进行参数化。为了评估和验证滑坡的敏感性,将滑坡随机分为两组,每组分别占受不稳定影响的总面积的50%。这项研究的结果表明,大部分被调查地区都具有高滑坡灾害的特征。

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