Improving predictive power of physically based rainfall-induced shallow landslide models: a probabilistic approach
S. Raia, M. Alvioli, M. Rossi, R. L. Baum, J. W. Godt, F. Guzzetti

TL;DR
This paper introduces TRIGRS-P, a probabilistic Monte Carlo extension of the deterministic TRIGRS model, improving the prediction of rainfall-induced shallow landslides by accounting for material variability.
Contribution
It develops a probabilistic approach to enhance landslide modeling accuracy, addressing uncertainties in material properties over large areas.
Findings
TRIGRS-P effectively incorporates variability in soil properties.
The probabilistic model improves landslide risk assessment.
Results show better prediction accuracy compared to deterministic models.
Abstract
Distributed models to forecast the spatial and temporal occurrence of rainfall-induced shallow landslides are based on deterministic laws. These models extend spatially the static stability models adopted in geotechnical engineering, and adopt an infinite-slope geometry to balance the resisting and the driving forces acting on the sliding mass. An infiltration model is used to determine how rainfall changes pore-water conditions, modulating the local stability/instability conditions. A problem with the operation of the existing models lays in the difficulty in obtaining accurate values for the several variables that describe the material properties of the slopes. The problem is particularly severe when the models are applied over large areas, for which sufficient information on the geotechnical and hydrological conditions of the slopes is not generally available. To help solve the…
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