This study is aimed at assessing different spatial patterns of predicted values of landslide susceptibility maps with almost similar success and prediction rate curves. Our approach is applied to an alpine environment (Italian Central Alps) where debris flows represent a frequent damaging phenomenon. The Weights of Evidence modelling technique (a data driven Bayesian method) was applied using ArcSDM (Arc Spatial Data Modeler) an ArcGIS extension. The output prediction maps were reclassified in the same way to compare the predicted results: a relative classification, based on the proportion of the area classified as susceptible, was made. The thresholds among different susceptibility classes were put at each 10% of the study area, classified decreasingly from the highest to the lowest susceptibility values. After applying Kappa Statistics, Cluster Analysys, and Principal Component Analysis (PCA), we analysed the spatial variability of the predicted maps, and also within the highest susceptibility classes.

Effect of the input parameters on the spatial variability of landslide susceptibility maps derived by statistical methods. Case study of the Valtellina valley (Italian Central Alps)

Sterlacchini S;
2006

Abstract

This study is aimed at assessing different spatial patterns of predicted values of landslide susceptibility maps with almost similar success and prediction rate curves. Our approach is applied to an alpine environment (Italian Central Alps) where debris flows represent a frequent damaging phenomenon. The Weights of Evidence modelling technique (a data driven Bayesian method) was applied using ArcSDM (Arc Spatial Data Modeler) an ArcGIS extension. The output prediction maps were reclassified in the same way to compare the predicted results: a relative classification, based on the proportion of the area classified as susceptible, was made. The thresholds among different susceptibility classes were put at each 10% of the study area, classified decreasingly from the highest to the lowest susceptibility values. After applying Kappa Statistics, Cluster Analysys, and Principal Component Analysis (PCA), we analysed the spatial variability of the predicted maps, and also within the highest susceptibility classes.
2006
Istituto per la Dinamica dei Processi Ambientali - IDPA - Sede Venezia
Istituto di Geologia Ambientale e Geoingegneria - IGAG
Landslide susceptibility mapping
Weights of Evidence
spatial variability
Kappa Statistics
Cluster Analysis
Princiapl Component Analysis
File in questo prodotto:
Non ci sono file associati a questo prodotto.

I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.

Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/20.500.14243/210988
Citazioni
  • ???jsp.display-item.citation.pmc??? ND
  • Scopus ND
  • ???jsp.display-item.citation.isi??? ND
social impact