In this work a new method for local landslide susceptibility evaluation and forecasting has been proposed, based on spatial statistics techniques and in particular on kernel density estimation. There are different methods existing in literature for this topic. One of the most used is the statistical bivariate method, based on the selection of different environmental factors. It calculates a susceptibility index that expresses how much each single factor weights and contributes in landslide hazard. The first limitation of the results obtained in this way is connected to the global character of the estimate. The second limitation is connected to the impossibility to have information on susceptibility from the interaction between landslides that are located close to each other, which are second order effects in landslides distribution. For these reasons this work proposes a new method that combines the bivariate statistical method with an approach based on kernel density estimation that was used and calibrated properly for landslides study.
A multi temporal kernel density estimation approach for new triggered landslides forecasting and susceptibility assessment
Maurizio Lazzari;Maria Danese
2012
Abstract
In this work a new method for local landslide susceptibility evaluation and forecasting has been proposed, based on spatial statistics techniques and in particular on kernel density estimation. There are different methods existing in literature for this topic. One of the most used is the statistical bivariate method, based on the selection of different environmental factors. It calculates a susceptibility index that expresses how much each single factor weights and contributes in landslide hazard. The first limitation of the results obtained in this way is connected to the global character of the estimate. The second limitation is connected to the impossibility to have information on susceptibility from the interaction between landslides that are located close to each other, which are second order effects in landslides distribution. For these reasons this work proposes a new method that combines the bivariate statistical method with an approach based on kernel density estimation that was used and calibrated properly for landslides study.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.