首页> 外文期刊>International Archives of the Photogrammetry, Remote Sensing and Spatial Information Sciences >APPLICATION OF LiDAR DATE TO ASSESS THE LANDSLIDE SUSCEPTIBILITY MAP USING WEIGHTS OF EVIDENCE METHOD – AN EXAMPLE FROM PODHALE REGION (SOUTHERN POLAND)
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APPLICATION OF LiDAR DATE TO ASSESS THE LANDSLIDE SUSCEPTIBILITY MAP USING WEIGHTS OF EVIDENCE METHOD – AN EXAMPLE FROM PODHALE REGION (SOUTHERN POLAND)

机译:应用证据权重法在激光雷达日期评估滑坡敏感性图中的应用-以波德黑尔地区(波兰南部)为例

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Podhale is a region in southern Poland, which is the northernmost part of the Central Carpathian Mountains. It is characterized by the presence of a large number of landslides that threaten the local infrastructure. In an article presents application of LiDAR data and geostatistical methods to assess landslides susceptibility map. Landslide inventory map were performed using LiDAR data and field work. The Weights of Evidence method was applied to assess landslides susceptibility map. Used factors for modeling: slope gradient, slope aspect, elevation, drainage density, faults density, lithology and curvature. All maps were subdivided into different classes. Then were converted to grid format in the ArcGIS 10.0. The conditional independence test was carried out to determine factors that are conditionally independent of each other with landslides. As a result, chi-square test for further GIS analysis used only five factors: slope gradient, slope aspect, elevation, drainage density and lithology. The final prediction results, it is concluded that the susceptibility map gives useful information both on present instability of the area and its possible future evolution in agreement with the morphological evolution of the area.
机译:Podhale是波兰南部的一个地区,该地区位于喀尔巴阡山脉中部的最北端。它的特点是存在大量威胁当地基础设施的滑坡。在一篇文章中介绍了LiDAR数据和地统计方法在评估滑坡敏感性地图中的应用。使用LiDAR数据和野外工作进行了滑坡清单地图。证据权重法用于评估滑坡敏感性图。用于建模的因素:坡度,坡度,高程,排水密度,断层密度,岩性和曲率。所有地图都细分为不同的类别。然后在ArcGIS 10.0中转换为网格格式。进行了条件独立性测试,以确定与滑坡有条件地彼此独立的因素。结果,用于进一步GIS分析的卡方检验仅使用了五个因素:坡度,坡度,高程,排水密度和岩性。最终的预测结果表明,磁化率图提供了有关该地区当前的不稳定性及其与该地区的形态演化相一致的未来可能演化的有用信息。

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