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Landslide susceptibility mapping using rough sets and back-propagation neural networks in the Three Gorges, China

机译:使用三叉神经网络和反向传播神经网络的中国三峡滑坡敏感性图

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In the Three Gorges of China, there are frequent landslides, and the potential risk of landslides is tremendous. An efficient and accurate method of generating landslide susceptibility maps is very important to mitigate the loss of lives and properties caused by these landslides. This paper presents landslide susceptibility mapping on the Zigui-Badong of the Three Gorges, using rough sets and back-propagation neural networks (BPNNs). Landslide locations were obtained from a landslide inventory map, supported by field surveys. Twenty-two landslide-related factors were extracted from the l:10,000-scale topographic maps, l:50,000-scale geological maps, Landsat ETM + satellite images with a spatial resolution of 28.5 m, and HJ-A satellite images with a spatial resolution of 30 m. Twelve key environmental factors were selected as independent variables using the rough set and correlation coefficient analysis, including elevation, slope, profile curvature, catchment aspect, catchment height, distance from drainage, engineering rock group, distance from faults, slope structure, land cover, topographic wetness index, and normalized difference vegetation index. The initial, three-layered, and four-layered BPNN were trained and then used to map landslide susceptibility, respectively. To evaluate the models, the susceptibility maps were validated by comparing with the existing landslide locations according to the area under the curve. The four-layered BPNN outperforms the other two models with the best accuracy of 91.53 %. Approximately 91.37 %oflandslides were classified as high and very high landslide-prone areas. The validation results show sufficient agreement between the obtained susceptibility maps and the existing landslide locations.
机译:在中国的三峡中,滑坡频发,潜在的滑坡风险巨大。生成滑坡敏感性图的有效而准确的方法对于减轻这些滑坡造成的生命和财产损失非常重要。本文利用粗糙集和反向传播神经网络(BPNN)提出了三峡自归-巴东的滑坡敏感性图。滑坡位置是从滑坡清单图上获得的,并得到了实地调查的支持。从l:10,000比例的地形图,l:50,000比例的地质图,空间分辨率为28.5 m的Landsat ETM +卫星图像以及具有空间分辨率的HJ-A卫星图像中提取了22个与滑坡相关的因子30 m。使用粗糙集和相关系数分析,选择了十二个关键环境因素作为自变量,包括海拔,坡度,剖面曲率,集水区长宽比,集水区高度,距排水的距离,工程岩石组,距断层的距离,边坡结构,土地覆盖,地形湿度指数和归一化植被指数。对最初的,三层和四层的BPNN进行了训练,然后分别用于绘制滑坡敏感性图。为了评估模型,通过根据曲线下方的面积与现有滑坡位置进行比较,验证了敏感性图。四层BPNN以91.53%的最佳精度胜过其他两个模型。大约91.37%的滑坡被划分为高滑坡区和非常高滑坡区。验证结果表明,所获得的磁化率图与现有滑坡位置之间具有足够的一致性。

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