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RESEARCH PRODUCT
Exploring the effect of absence selection on landslide susceptibility models: A case study in Sicily, Italy
Edoardo RotiglianoNathalie Almaru Caraballo-ariasLuigi LombardoChristian ConoscentiValerio AgnesiMariaelena Camasubject
Multivariate Adaptive Regression Splines (MARS)Geographic information system010504 meteorology & atmospheric sciencesCalibration (statistics)Lithologymedia_common.quotation_subjectSettore GEO/04 - Geografia Fisica E GeomorfologiaGeographic Information Systems (GIS)010502 geochemistry & geophysicsSpatial distribution01 natural sciencesSettore AGR/08 - Idraulica Agraria E Sistemazioni Idraulico-ForestaliGeographic Information Systems (GIS); Google Earth; Landslide susceptibility; Multivariate Adaptive Regression Splines (MARS); Earth-Surface Processes0105 earth and related environmental sciencesmedia_commonEarth-Surface ProcessesVariablesMultivariate adaptive regression splinesReceiver operating characteristicbusiness.industryGoogle EarthLandslideLandslide susceptibilitybusinessCartographyGeologydescription
Abstract A statistical approach was employed to model the spatial distribution of rainfall-triggered landslides in two areas in Sicily (Italy) that occurred during the winter of 2004–2005. The investigated areas are located within the Belice River basin and extend for 38.5 and 10.3 km 2 , respectively. A landslide inventory was established for both areas using two Google Earth images taken on October 25th 2004 and on March 18th 2005, to map slope failures activated or reactivated during this interval. Geographic Information Systems (GIS) were used to prepare 5 m grids of the dependent variables (absence/presence of landslide) and independent variables (lithology and 13 DEM-derivatives). Multivariate Adaptive Regression Splines (MARS) were applied to model landslide susceptibility whereas receiver operating characteristic (ROC) curves and the area under the ROC curve ( AUC ) were used to evaluate model performance. To evaluate the robustness of the whole procedure, we prepared 10 different samples of positive (landslide presence) and negative (landslide absence) cases for each area. Absences were selected through two different methods: (i) extraction from randomly distributed circles with a diameter corresponding to the mean width of the landslide source areas; and (ii) selection as randomly distributed individual grid cells. A comparison was also made between the predictive performances of models including and not including the lithology parameter. The models trained and tested on the same area demonstrated excellent to outstanding fit ( AUC > 0.8). On the other hand, predictive skill decreases when measured outside the calibration area, although most of the landslides occur where susceptibility is high and the overall model performance is acceptable ( AUC > 0.7). The results also showed that the accuracy of the landslide susceptibility models is higher when lithology is included in the statistical analysis. Models whose absences were selected using random circles showed a significantly better performance when learning and validation samples were extracted from the same area; whereas, conversely, no significant difference was observed when testing the models outside the training area.
year | journal | country | edition | language |
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2016-05-01 |