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Use of Very High-Resolution Optical Data for Landslide Mapping and Susceptibility Analysis along the Karnali Highway, Nepal

机译:使用非常高分辨率光学数据进行尼泊尔Karnali公路的滑坡测绘和易感性分析

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摘要

The Karnali highway is a vital transport link and the only primary roadway that connects the remote Karnali region to the lowlands in Mid-Western Nepal. Every year there are reports of landslides blocking the road, making this area largely inaccessible. However, little effort has focused on systematically identifying landslides and landslide-prone areas along this highway. In this study, landslides were mapped with an object-based approach from very high-resolution optical satellite imagery obtained by the DigitalGlobe constellation in 2012 and PlanetScope in 2018. Landslides ranging from 10 to 30,496 m2 were detected within a 3 km buffer along the highway. Most of the landslides were located at lower elevations (between 500−1500 m) and on steep south-facing slopes. Landslides tended to cluster closer to the highway, near drainage channels and away from faults. Landslides were also most prevalent within the Kuncha Formation geologic class, and the forested and agricultural land cover classes. A susceptibility map was then created using a logistic regression methodology to highlight patterns in landslide activity. The landslide susceptibility map showed a good prediction rate with an area under the curve (AUC) of 0.90. A total of 33% of the study arealies in high/very high susceptibility zones. The map highlighted the lower elevated areas between Bangesimal and Manma towns with the Kuncha Formation geologic class as being the most hazardous. The banks of the Karnali River, its tributaries and areas near the highway were also highly susceptible to landslides. The results highlight the potential of very high-resolution optical imagery for documenting detailed spatial information on landslide occurrence, which enables susceptibility assessment in remote and data scarce regions such as the Karnali highway.
机译:Karnali Highway是一个重要的运输环节和唯一一个将偏远的Karnali地区连接到尼泊尔中西部的低地的唯一主要道路。每年有报道,山体滑坡阻挡了道路,使这个区域很难进入。然而,很少的努力集中在系统地识别沿着这条高速公路的滑坡和滑坡。在这项研究中,山体滑坡以2012年的DigitalGlobe星座获得的非常高分辨率的光学卫星图像和2018年的普通扫描仪映射。在高速公路的3公里处的缓冲区中检测到10至30,496m2的滑坡。大多数山体滑坡位于较低的海拔(500-1500米之间)和陡峭的朝南斜坡上。山体滑坡往往靠近高速公路,靠近排水沟,远离故障。山体滑坡在Kuncha形成地质级和森林和农业陆地覆盖课程中也是最普遍的。然后使用Logistic回归方法创建易感性图,以突出滑坡活动中的模式。滑坡敏感性图显示出良好的预测率,曲线下的面积(AUC)为0.90。共有33%的研究在高/非常高的易感区中产生了。该地图突出了Banhemal和Manma Towns之间的较低的升高区域,其中kuncha形成地质课是最危险的。 Karnali River的银行,其支流和公路附近的地区也极易易受山体滑坡。结果突出了非常高分辨率光学图像的潜力,用于记录关于滑坡发生的详细空间信息,这使得在遥控器和数据稀缺地区(如Karnali公路)中实现了易感性评估。

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