Forward logistic regression for earth-flow landslide susceptibility assessment in the Platani river basin (southern Sicily, Italy)

被引:55
作者
Costanzo, Dario [1 ]
Chacon, Jose [2 ]
Conoscenti, Christian [1 ]
Irigaray, Clemente [2 ]
Rotigliano, Edoardo [1 ]
机构
[1] Univ Palermo, Dept Earth & Sea Sci, I-90123 Palermo, Italy
[2] Univ Granada, Dept Civil Engn, ETSICCP, E-18071 Granada, Spain
关键词
Landslide susceptibility assessment; Forward logistic regression; Diagnostic area; Model validation; Platani river (Sicily Italy); ARTIFICIAL NEURAL-NETWORKS; GIS MATRIX-METHOD; HAZARD; MAPS; MULTIVARIATE; VALIDATION; SELECTION; MODELS; AREA;
D O I
10.1007/s10346-013-0415-3
中图分类号
P5 [地质学];
学科分类号
0709 ; 081803 ;
摘要
Forward logistic regression has allowed us to derive an earth-flow susceptibility model for the Tumarrano river basin, which was defined by modeling the statistical relationships between an archive of 760 events and a set of 20 predictors. For each landslide in the inventory, a landslide identification point (LIP) was automatically produced as corresponding to the highest point along the boundary of the landslide polygons, and unstable conditions were assigned to cells at a distance up to 8 m. An equal number of stable cells (out of landslides) was then randomly extracted and appended to the LIPs to prepare the dataset for logistic regression. A model building strategy was applied to enlarge the area included in training the model and to verify the sensitivity of the regressed models with respect to the locations of the selected stable cells. A suite of 16 models was prepared by randomly extracting different unoverlapping stable cell subsets that have been appended to the unstable ones. Models were finally submitted to forward logistic regression and validated. The results showed satisfying and stable error rates (0.236 on average, with a standard deviation of 0.007) and areas under the receiver operating characteristic (ROC) curve (AUCs) (0.839 for training and 0.817 for test datasets) as well as factor selections (ranks and coefficients). As regards the predictors, steepness and large-profile and local-plan topographic curvatures were systematically selected. Clayey outcropping lithology, midslope drainage, local and midslope ridges, and canyon landforms were also very frequently (from eight to 15 times) included in the models by the forward selection procedures. The model-building strategy allowed us to produce a performing earth-flow susceptibility model, whose model fitting, prediction skill, and robustness were estimated on the basis of validation procedures, demonstrating the independence of the regressed model on the specific selection of the stable cells.
引用
收藏
页码:639 / 653
页数:15
相关论文
共 60 条
[51]  
Rakotomalala R., 2005, P EGC 2005 RNTI E 3, V2, P697
[52]   Constrain to perform:: Regularization of habitat models [J].
Reineking, B ;
Schröder, B .
ECOLOGICAL MODELLING, 2006, 193 (3-4) :675-690
[53]   Optimal landslide susceptibility zonation based on multiple forecasts [J].
Rossi, Mauro ;
Guzzetti, Fausto ;
Reichenbach, Paola ;
Mondini, Alessandro Cesare ;
Peruccacci, Silvia .
GEOMORPHOLOGY, 2010, 114 (03) :129-142
[54]   Slope units-based flow susceptibility model: using validation tests to select controlling factors [J].
Rotigliano, E. ;
Cappadonia, C. ;
Conoscenti, C. ;
Costanzo, D. ;
Agnesi, V. .
NATURAL HAZARDS, 2012, 61 (01) :143-153
[55]   The role of the diagnostic areas in the assessment of landslide susceptibility models: a test in the sicilian chain [J].
Rotigliano, E. ;
Agnesi, V. ;
Cappadonia, C. ;
Conoscenti, C. .
NATURAL HAZARDS, 2011, 58 (03) :981-999
[56]   A comparison of the GIS based landslide susceptibility assessment methods:: multivariate versus bivariate [J].
Süzen, ML ;
Doyuran, V .
ENVIRONMENTAL GEOLOGY, 2004, 45 (05) :665-679
[57]   Prediction of landslide susceptibility using rare events logistic regression: A case-study in the Flemish Ardennes (Belgium) [J].
Van den Eeckhaut, M. ;
Vanwalleghem, T. ;
Poesen, J. ;
Govers, G. ;
Verstraeten, G. ;
Vandekerckhove, L. .
GEOMORPHOLOGY, 2006, 76 (3-4) :392-410
[58]   Combined landslide inventory and susceptibility assessment based on different mapping units: an example from the Flemish Ardennes, Belgium [J].
Van Den Eeckhaut, M. ;
Reichenbach, P. ;
Guzzetti, F. ;
Rossi, M. ;
Poesen, J. .
NATURAL HAZARDS AND EARTH SYSTEM SCIENCES, 2009, 9 (02) :507-521
[59]   Landslide susceptibility assessment in the Upper Orcia Valley (Southern Tuscany, Italy) through conditional analysis: a contribution to the unbiased selection of causal factors [J].
Vergari, F. ;
Della Seta, M. ;
Del Monte, M. ;
Fredi, P. ;
Palmieri, E. Lupia .
NATURAL HAZARDS AND EARTH SYSTEM SCIENCES, 2011, 11 (05) :1475-1497
[60]   How can statistical models help to determine driving factors of landslides? [J].
Vorpahl, Peter ;
Elsenbeer, Helmut ;
Maerker, Michael ;
Schroeder, Boris .
ECOLOGICAL MODELLING, 2012, 239 :27-39