Statistical modelling of Europe-wide landslide susceptibility using limited landslide inventory data

In many regions, the absence of a landslide inventory hampers the production of susceptibility or hazard maps. Therefore, a method combining a procedure for sampling of landslide-affected and landslide-free grid cells from a limited landslide inventory and logistic regression modelling was tested fo...

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Veröffentlicht in:Landslides 2012-09, Vol.9 (3), p.357-369
Hauptverfasser: Van Den Eeckhaut, M., Hervás, J., Jaedicke, C., Malet, J.-P., Montanarella, L., Nadim, F.
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container_issue 3
container_start_page 357
container_title Landslides
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creator Van Den Eeckhaut, M.
Hervás, J.
Jaedicke, C.
Malet, J.-P.
Montanarella, L.
Nadim, F.
description In many regions, the absence of a landslide inventory hampers the production of susceptibility or hazard maps. Therefore, a method combining a procedure for sampling of landslide-affected and landslide-free grid cells from a limited landslide inventory and logistic regression modelling was tested for susceptibility mapping of slide- and flow-type landslides on a European scale. Landslide inventories were available for Norway, Campania (Italy), and the Barcelonnette Basin (France), and from each inventory, a random subsample was extracted. In addition, a landslide dataset was produced from the analysis of Google Earth images in combination with the extraction of landslide locations reported in scientific publications. Attention was paid to have a representative distribution of landslides over Europe. In total, the landslide-affected sample contained 1,340 landslides. Then a procedure to select landslide-free grid cells was designed taking account of the incompleteness of the landslide inventory and the high proportion of flat areas in Europe. Using stepwise logistic regression, a model including slope gradient, standard deviation of slope gradient, lithology, soil, and land cover type was calibrated. The classified susceptibility map produced from the model was then validated by visual comparison with national landslide inventory or susceptibility maps available from literature. A quantitative validation was only possible for Norway, Spain, and two regions in Italy. The first results are promising and suggest that, with regard to preparedness for and response to landslide disasters, the method can be used for urgently required landslide susceptibility mapping in regions where currently only sparse landslide inventory data are available.
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subjects Agriculture
Civil Engineering
Earth and Environmental Science
Earth Sciences
Geography
Inventories
Landslides
Landslides & mudslides
Lithology
Logistics
Mathematical models
Natural Hazards
Original Paper
Regression
Regression analysis
Risk assessment
Slope gradients
Statistical models
Stockpiling
title Statistical modelling of Europe-wide landslide susceptibility using limited landslide inventory data
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