首页> 外文期刊>Journal of Zhejiang University. Science, A >GIS-based logistic regression method for landslide susceptibility mapping in regional scale
【24h】

GIS-based logistic regression method for landslide susceptibility mapping in regional scale

机译:基于GIS基于区域规模滑坡易感性映射的逻辑回归方法

获取原文
       

摘要

landslide susceptibility map is one of the study fields portraying the spatial distribution of future slope failure susceptibility. This paper deals with past methods for producing landslide susceptibility map and divides these methods into 3 types. The loGIStic linear regression approach is further elaborated on by crosstabs method, which is used to analyze the relationship between the categorical or binary response variable and one or more continuous or categorical or binary explanatory variables derived from samples. It is an objective assignment of coefficients serving as weights of various factors under considerations while expert opinions make great difference in heuristic approaches. Different from deterministic approach, it is very applicable to regional scale. In this study, double GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression is applied in the study area. The entire study area is first analyzed. The GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression equation showed that elevation, proximity to road, river and residential area are main factors triggering landslide occurrence in this area. The prediction accuracy of the first landslide susceptibility map was showed to be 80%. Along the road and residential area, almost all areas are in high landslide susceptibility zone. Some non-landslide areas are incorrectly divided into high and medium landslide susceptibility zone. In order to improve the status, a second GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression was done in high landslide susceptibility zone using landslide cells and non-landslide sample cells in this area. In the second GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression analysis, only engineering and geological conditions are important in these areas and are entered in the new GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression equation indicating that only areas with unstable engineering and geological conditions are prone to landslide during large scale engineering activity. Taking these two GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression results into account yields a new landslide susceptibility map. Double GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression analysis improved the non-landslide prediction accuracy. During calculation of parameters for GIStic regression%29&ck%5B%5D=abstract&ck%5B%5D=keyword'>loGIStic regression, landslide density is used to transform nominal variable to numeric variable and this avoids the creation of an excessively high number of dummy variables.
机译:Landslide易感性图是描绘了未来坡度故障易感性的空间分布的研究领域之一。本文涉及生产滑坡敏感性图的过去的方法,并将这些方法分成3种类型。通过Crosstabs方法进一步详细阐述了逻辑线性回归方法,其用于分析分类或二进制响应变量与来自样本的一个或多个连续或分类或二进制解释变量之间的关系。它是作为各种因素的重量的系数的客观分配,而专家意见对启发式方法产生很大差异。与确定性方法不同,它非常适用于区域规模。在这项研究中,双基本基础回归%29和CK%5B%5d = Abstract&CK%5b%5d =关键字'>逻辑回归应用于研究区域。首先分析整个研究区。 Gristion回归%29&CK%5B%5d =摘要和CK%5B%5d =关键字'>逻辑回归方程表明,高程,靠近道路,河流和住宅区是触发该领域滑坡发生的主要因素。第一滑坡易感性图的预测精度显示为80%。沿着道路和住宅区,几乎所有区域都处于高滑坡易感区。一些非滑坡区域被错误地分为高中和中等滑坡易感区。为了提高状态,第二个基本回归%29和CK%5B%5d =摘要和CK%5b%5d =关键词'>逻辑回归在该区域中的滑坡细胞和非滑坡样品细胞在高滑坡易感区进行。在第二个族裔回归%29和CK%5B%5D =摘要&CK%5B%5d =关键字'>逻辑回归分析,只有工程和地质条件在这些区域中都很重要,并进入新的GISTIC回归%29和CK%5B%5d =摘要&ck%5b%5d =关键字'>逻辑回归方程,表明在大规模工程活动期间只有具有不稳定工程和地质条件的区域才能摇摆滑坡。采用这两种基本回归%29&CK%5B%5d =摘要&ck%5b%5d =关键字'>逻辑回归结果考虑到了新的滑坡易感性图。双基本回归%29&CK%5B%5d =摘要&ck%5b%5d =关键字'>逻辑回归分析提高了非滑坡预测精度。在计算Gristic回归的参数期间,%29&CK%5B%5d = Abstract&CK%5B%5d =关键字'>逻辑回归,滑坡密度用于将标称变量转换为数字变量,这避免了创建过大数量的虚拟变量。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号