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GIS-based logistic regression method for landslide susceptibility mapping in regional scale 被引量:9

GIS-based logistic regression method for landslide susceptibility mapping in regional scale
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摘要 Landslide susceptibility map is one of the study fields portraying the spatial distribution of future slope failure sus- ceptibility. 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 logistic regression is applied in the study area. The entire study area is first analyzed. The logistic regression equation showed that elevation, proximity to road, river and residential area are main factors triggering land- slide 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 logistic regression was done in high landslide susceptibility zone using landslide cells and non-landslide sample cells in this area. In the second logistic regression analysis, only engineering and geological conditions are important in these areas and are entered in the new 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 logistic regression results into account yields a new landslide susceptibility map. Double logistic regression analysis improved the non-landslide prediction accuracy. During calculation of parameters for logistic regres- sion, landslide density is used to transform nominal variable to numeric variable and this avoids the creation of an excessively high number of dummy variables. 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 logistic regression is applied in the study area. The entire study area is first analyzed. The 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 logistic regression was done in high landslide susceptibility zone using landslide cells and non-landslide sample cells in this area. In the second logistic regression analysis, only engineering and geological conditions are important in these areas and are entered in the new 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 logistic regression results into account yields a new landslide susceptibility map. Double logistic regression analysis improved the non-landslide prediction accuracy. During calculation of parameters for 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.
出处 《Journal of Zhejiang University-Science A(Applied Physics & Engineering)》 SCIE EI CAS CSCD 2006年第12期2007-2017,共11页 浙江大学学报(英文版)A辑(应用物理与工程)
基金 Project supported by the Natural Science Foundation of ZhejiangProvince (No. 30295) and the Key Project of Zhejiang Province (No.011103192), China
关键词 滑坡 磁化率 逻辑回归 GIS 空间分析 Landslide, Susceptibility, Logistic regression, GIS, Spatial analysis
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参考文献12

  • 1Lulseged Ayalew,Hiromitsu Yamagishi,Norimitsu Ugawa.Landslide susceptibility mapping using GIS-based weighted linear combination, the case in Tsugawa area of Agano River, Niigata Prefecture, Japan[J].Landslides.2004(1)
  • 2P. Aleotti,R. Chowdhury.Landslide hazard assessment: summary review and new perspectives[J].Bulletin of Engineering Geology and the Environment.1999(1)
  • 3Gómez, H.,Kavzoglu, T.Assessment of shallow land-slide susceptibility using artificial neural networks in Jabonosa River Basin[].Venezuela Engineering Geology.2005
  • 4Lee, S,Ryu, J.,Min, K.,Won, J.Development of Two Artificial Neural Network Methods for Landslide Sus-ceptibility Analysis[].Proceedings of the Geoscience and Remote Sensing Symposium IGARSS’ IEEE International.2001
  • 5Yesilnacar, E,Topal, T.Landslide susceptibility map-ping: A comparison of logistic regression and neural networks methods in a medium scale study, Hendek re-gion (Turkey)[].Engineering Geology.2005
  • 6Guzzetti, F.,Carrara, A.,Cardinali, M.,Reichenbach, P.Landslide hazard evaluation: a review of current tech-niques and their application in a multi-scale study, central Italy[].Geomorphology.1999
  • 7Clerici, A.,Perego, S,Tellini, C.,Vescovi, P.A pro-cedure for landslide susceptibility zonation by the condi-tional analysis method[].Geomorphology.2002
  • 8Tasser, E.,Mader, M.,Tappeiner, U.Effects of land use in alpine grasslands on the probability of landslides[].Basic Appl Ecol.2003
  • 9Ayalew, L,Yamagishi, H.The application of GIS-based logistic regression for susceptibility mapping in the Kakuda-Yahiko Mountains[].Central Japan Geo-morphology.2005
  • 10Gray, D.H,Leiser, A.T.Biotechnical Slope Protection and Erosion Control[].Van Nostrand-Reinhold.1982

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