首页> 外文期刊>国际泥沙研究(英文版) >Modeling the potential distribution of shallow-seated landslides using the weights of evidence method and a logistic regression model:a case study of the Sabae Area, Japan
【24h】

Modeling the potential distribution of shallow-seated landslides using the weights of evidence method and a logistic regression model:a case study of the Sabae Area, Japan

机译:利用证据方法和逻辑回归模型建模浅层坐垫鞋面的潜在分布 - 以日本Sabae地区为例

获取原文
获取原文并翻译 | 示例
       

摘要

A number of statistical methods are typically used to effectively predict potential landslide distributions.In this study two multivariate statistical analysis methods were used (weights of evidence and logistic regression) to predict the potential distribution of shallow-seated landslides in the Kamikawachi area of Sabae City,Fukui Prefecture,Japan.First,the dependent variable (shallow-seated landslides) was divided into presence and absence,and the independent variables (environmental factors such as slope and altitude) were categorized according to their characteristics.Then,using the weights of evidence (WE) method,the weights of pairs comprising presence (w+(i) ) or absence (w-(i) ),and the contrast values for each category of independent variable (evidence),were calculated.Using the method that integrated the weights of evidence method and a logistic regression model,score values were calculated for each category of independent variable.Based on these contrast values,three models were selected to sum the score values of every gird in the study area.According to a receiver operating characteristic curve analysis (ROC),model 2 yielded the best fit for predicting the potential distribution of shallow-seated landslide hazards,with 89% correctness and a 54.5% hit ratio when the occurrence probability (OP) of landslides was 70%.The model was tested using data from an area close to the study region,and showed 94% correctness and a hit ratio of 45.7% when the OP of landslides was 70%.Finally,the potential distribution of shallow-seated landslides,based on the OP,was mapped using a geographical information system.
机译:许多统计方法通常用于有效地预测潜在的滑坡分布。本研究使用了两种多变量统计分析方法(证据和逻辑回归的重量),以预测Sabae City Kamikawachi地区的浅座位滑坡的潜在分布,福井府,日本。首先,依赖变量(浅层坐垫滑坡)分为存在,缺席,并且根据其特征,独立变量(坡度和海拔地区等环境因素)分类。该改变,使用重量证据(我们)方法,包括存在(w +(i))或缺失(w-(i))的对的权重,以及每个类别的独立变量(证据)的对比度值。为集成的方法证据方法的权重和逻辑回归模型,为每个类别的独立变量计算了分数值。基于这些对比度值,三个模型被选择总结研究区域中的每个曲线的分数值。根据接收器操作特征曲线分析(ROC),模型2产生了最适合预测浅层坐垫危险的潜在分布,具有89%的正确性和89%当山体滑坡发生概率(OP)为70%时,击中比率为54.5%。使用来自研究区域附近的区域的数据测试了模型,并且当滑坡的OP时显示出94%的正确性和45.7%的命中比率为45.7%射击了70%。最后,使用地理信息系统映射了基于OP的浅层坐垫滑坡的潜在分布。

著录项

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