首页> 外文会议>Conference on Geospatial Information Technology and Applications; 20070525-27; Nanjing(CN) >A GIS-based landslide hazard assessment by multiple regression analysis
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A GIS-based landslide hazard assessment by multiple regression analysis

机译:基于多元回归分析的基于GIS的滑坡灾害评估

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The occurrence of landslides generally depends on complex interactions among a large number of partially interrelated factors. It is appropriate to use multiple regression analysis for predicting landslides from a given set of independent variables. The procedure of landslide hazard assessment by regression analysis, however, requires evaluation of the spatially varying terrain conditions as well as spatial representation of the landslides. In this paper, the multiple regression analysis was applied to predict landslides in Himi district from independent factors, such as geology, slope-aspect, slope angle, land use and soil with Geographic Information System (GIS). Based on GIS, every factor was classified into several clusters and then the statistical weight of every cluster was assigned for every factor respectively. By the weights of five factors, the linear regression's coefficients of these input factors in landslide area were extracted and assigned to the whole region, and then the susceptibility for the potential landslide was obtained to make the landslide hazard assessment map. Geology and slope-aspect factors are the most important ones. Soil factor is not so notable in this research region, though it may be significant in other regions. At last, the average susceptibilities map for existing landslides was made for the engineers to do control work.
机译:滑坡的发生通常取决于大量相互关联的因素之间的复杂相互作用。使用多元回归分析从给定的一组独立变量中预测滑坡是适当的。但是,通过回归分析进行滑坡灾害评估的程序需要评估空间变化的地形条件以及滑坡的空间表示形式。本文采用多元回归分析方法,利用地理信息系统(GIS),从地质,坡度,坡度,土地利用和土壤等独立因素对冰见地区的滑坡进行了预测。基于GIS,将每个因子分类为几个聚类,然后分别为每个因子分配每个聚类的统计权重。利用五个因子的权重,提取这些输入因子在滑坡地区的线性回归系数,并分配给整个区域,然后获得对潜在滑坡的敏感性,制作滑坡灾害评价图。地质因素和坡度因素是最重要的因素。尽管在其他区域中土壤因子可能很重要,但在该研究区域中土壤因子并不那么显着。最后,绘制了现有滑坡的平均磁化率图,以便工程师进行控制工作。

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