首页> 外文期刊>Bulletin of engineering geology and the environment >A comparative study of landslide susceptibility mapping using landslide susceptibility index and artificial neural networks in the Krios River and Krathis River catchments (northern Peloponnesus, Greece)
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A comparative study of landslide susceptibility mapping using landslide susceptibility index and artificial neural networks in the Krios River and Krathis River catchments (northern Peloponnesus, Greece)

机译:利用滑坡敏感性指数和人工神经网络在克里奥斯河和克拉西斯河流域(希腊北伯罗奔尼撒半岛)进行滑坡敏感性图的比较研究

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摘要

The main scope of this study is to compare the performance of a conventional statistical method like the landslide susceptibility index (LSI) and a soft computing method like artificial neural networks (ANNs). These models were applied in order to realistically map landslide susceptibility (LS) in the Krathis and Krios drainage basins in northern Peloponnesus. The relationship between landslides and various conditioning factors contributing to their occurrence was investigated through geographic information system-based analysis. A landslide inventory was realised using aerial-photos, satellite images and field surveys. Eight conditioning factors, including land cover, geology, elevation, slope, aspect, distance to road network, distance to drainage network, distance to structural elements, were considered. Subsequently, LS maps were produced using LSI and ANNs, and they were then compared and validated accordingly. Model performance was checked by an independent validation set of landslide events. For the validation process, the receiver operating curve was drawn and the area-under-the-curve (AUC) values were calculated. The calculated AUC values were 0.852 for the LSI model, and 0.842 for the ANNs; thus, both methods seem to lead to quite similar results. Based on these results, with an average percentage of correctly predicting landslides of about 84 %, model validation confirms that extrapolation results are very good, and that both models can be used to mitigate hazards related to landslides, and to aid in generalised land-use planning assessment purposes.
机译:这项研究的主要范围是比较传统统计方法(例如滑坡敏感性指数(LSI))和软计算方法(例如人工神经网络(ANN))的性能。运用这些模型是为了实际绘制北伯罗奔尼撒半岛的Krathis和Krios流域的滑坡敏感性(LS)。通过基于地理信息系统的分析,研究了滑坡与导致滑坡发生的各种条件因素之间的关系。利用航拍照片,卫星图像和野外勘测实现了滑坡清查。考虑了八个条件因素,包括土地覆盖,地质,高程,坡度,纵横比,距路网的距离,距排水网的距离,距结构要素的距离。随后,使用LSI和ANN制作了LS图,然后对其进行了比较和验证。通过一组独立的滑坡事件验证来检查模型的性能。对于验证过程,绘制了接收器工作曲线,并计算了曲线下面积(AUC)值。对于LSI模型,计算的AUC值为0.852;对于ANN,计算的AUC值为0.842;因此,这两种方法似乎都能得出非常相似的结果。根据这些结果,可以正确预测滑坡的平均百分比约为84%,模型验证证实了外推结果非常好,并且两个模型都可以用于减轻与滑坡有关的危害并有助于广义的土地利用规划评估目的。

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