The Use of an Unmanned Aerial Vehicle (UAV) for First-Failure Landslide Detection

Michele Mercuri, Deborah Biondino, M. Ciurleo, Gino Cofone, Massimo Conforti, G. Gullà, Maria Carmela Stellato, L. Borrelli
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Abstract

The use of unmanned aerial vehicles (UAVs) can significantly assist landslide detection and characterization in different geological contexts at a detailed scale. This study investigated the role of UAVs in detecting a first-failure landslide occurring in Calabria, South Italy, and involving weathered granitoid rocks. After the landslide event, which caused the interruption of State Road 107, a UAV flight was carried out to identify landslide boundaries and morphological features in areas where there are problems of safe access. The landslide was classified as flow-type, with a total length of 240 m, a maximum width of 70 m, and a maximum depth of about 6.5 m. The comparison of the DTMs generated from UAV data with previously available LIDAR data indicated significant topographic changes across the landslide area. A minimum negative value of −6.3 m suggested material removal at the landslide source area. An approximate value of −2 m in the transportation area signified bed erosion and displacement of material as the landslide moved downslope. A maximum positive value of 4.2 m was found in the deposition area. The landslide volume was estimated to be about 6000 m3. These findings demonstrated the effectiveness of UAVs for landslide detection, showing their potentiality as valuable tools in planning further studies for a detailed landslide characterization and for defining the most appropriate risk mitigation measures.
使用无人驾驶飞行器(UAV)进行首次崩塌滑坡探测
使用无人驾驶飞行器(UAVs)可以极大地帮助在不同的地质环境中进行详细的滑坡探测和特征描述。本研究调查了无人飞行器在探测发生在意大利南部卡拉布里亚、涉及风化花岗岩的首次塌方滑坡中的作用。山体滑坡事件导致 107 国道中断,在事件发生后,进行了一次无人机飞行,以确定山体滑坡边界和存在安全通道问题地区的形态特征。无人机数据生成的 DTM 与之前可用的激光雷达数据进行比较后发现,整个滑坡区域的地形发生了显著变化。最小负值为 -6.3 米,表明滑坡源区的物质被清除。运输区的近似值为-2 米,表明随着滑坡向下移动,岩床受到侵蚀,物质发生位移。沉积区的最大正值为 4.2 米。滑坡体积估计约为 6000 立方米。这些研究结果证明了无人飞行器在滑坡探测方面的有效性,显示了其作为宝贵工具的潜力,可用于规划进一步的研究,以进行详细的滑坡特征描述,并确定最合适的风险缓解措施。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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CiteScore
2.60
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