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Abstract
Landslide susceptibility corresponds to the probability of landslide occurrence across a given geographic space. This probability is usually estimated by using a binary classifier which is informed of landslide presence/absence data and associated landscape characteristics.
Here, we consider the Italian national landslide inventory to prepare slope-unit based
landslide susceptibility maps. These maps are prepared for the eight types of mass movements existing in the inventory, (Complex, Deep Seated Gravitational Slope Deformation,
Diffused Fall, Fall, Rapid Flow, Shallow, Slow Flow, Translational) and build one susceptibility map for each type.
The analysis -- carried out by using a Bayeian version of a Generalized Additive Model with a multiple intercept for each Italian region -- revealed that the inventory may have been compiled with different levels of detail. This would be consistent with the datases being assembled from twenty sub--inventories, each prepared by different administrations of the Italian regions. As a result, this spatial inhonomegenity may lead to a biased national--scale susceptibility maps.
On the basis of these considerations, we further analyzed the national database to confirm or reject the varying quality hypothesis suggested by the multiple intercepts results. For each landslide type, we then tried to build unbiased susceptibility models by removing regions with a poor landslide inventory from the calibration stage, and used them only as a prediction target of a simulation routine. We analyzed the resulting eight maps finding out a congruent dominant pattern in the Alpine and Apennine sectors.
The whole procedure is implemented in R--INLA. This allowed to examine fixed (linear) and random (nonlinear) effects from an interpretative standpoint and produced a full prediction equipped with an estimated uncertainty.
We propose this overall modeling pipeline for any landslide datasets where a significant mapping bias may influence the susceptibility pattern over space.
DOI
https://doi.org/10.31223/X5Q92S
Subjects
Physical Sciences and Mathematics
Keywords
Integrated nested Laplace approximation (INLA), Landslide susceptibility, Slope unit, Model bias, Multiple landslide class
Dates
Published: 2022-02-25 07:49
License
CC BY Attribution 4.0 International
Additional Metadata
Data Availability (Reason not available):
Link to data is reported in the document.
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