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Evaluation of landslide susceptibility mapping techniques using lidar-derived conditioning factors (Oregon case study)

机译:利用激光雷达条件条件评估滑坡敏感性地图技术(俄勒冈州案例研究)

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ABSTRACT Landslides are a significant geohazard, which frequently result in significant human, infrastructure, and economic losses. Landslide susceptibility mapping using GIS and remote sensing can help communities prepare for these damaging events. Current mapping efforts utilize a wide variety of techniques and consider multiple factors. Unfortunately, each study is relatively independent of others in the applied technique and factors considered, resulting in inconsistencies. Further, input data quality often varies in terms of source, data collection, and generation, leading to uncertainty. This paper investigates if lidar-derived data-sets (slope, slope roughness, terrain roughness, stream power index, and compound topographic index) can be used for predictive mapping without other landslide conditioning factors. This paper also assesses the differences in landslide susceptibility mapping using several, widely used statistical techniques. Landslide susceptibility maps were produced from the aforementioned lidar-derived data-sets for a small study area in Oregon using six representative statistical techniques. Most notably, results show that only a few factors were necessary to produce satisfactory maps with high predictive capability (area under the curve >0.7). The sole use of lidar digital elevation models and their derivatives can be used for landslide mapping using most statistical techniques without requiring additional detailed data-sets that are often difficult to obtain or of lower quality.
机译:摘要滑坡是一个重大的地质灾害,经常造成重大的人员,基础设施和经济损失。使用GIS和遥感进行滑坡敏感性分析可以帮助社区为这些破坏性事件做好准备。当前的制图工作利用多种技术并考虑了多个因素。不幸的是,每项研究在应用技术和考虑因素方面都相对独立于其他研究,从而导致不一致。此外,输入数据质量通常在源,数据收集和生成方面有所不同,从而导致不确定性。本文研究了激光雷达衍生的数据集(坡度,坡度粗糙度,地形粗糙度,水流功率指数和复合地形指数)是否可以用于没有其他滑坡条件因素的预测测绘。本文还使用几种广泛使用的统计技术评估了滑坡敏感性图的差异。使用六种代表性统计技术,从俄勒冈州一个较小研究区域的上述激光雷达数据集生成滑坡敏感性图。最值得注意的是,结果表明,只有少数几个因素才可以生成具有高预测能力的令人满意的图(曲线下的面积> 0.7)。激光雷达数字高程模型及其导数的唯一用途是使用大多数统计技术来进行滑坡测绘,而无需其他通常很难获得或质量较低的详细数据集。

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