Abstract

Rainfall-Induced Landslide Early Warning Systems (RILEWS) are critical tools for reducing and mitigating economic and social damages related to landslides. Despite this critical need, the Southern Andes does not yet possess an operational-scale system to support decision-makers. We propose RILEWS using a logistic regression system in the Southern Andes. The models were forced by corrected simulations of precipitation and geomorphological features. We evaluated the precipitation using the Weather and Research Forecast (WRF) model on an hourly scale. The precipitation was corrected using bias correction approaches with daily data from 12 meteorological stations. Four logistic and probabilistic models were then calibrated using Logit and Probit distributions. The predictor variables used were combinations of the slope, corrected daily precipitation and data preceding the events (7 and 30 days previous) for 57 Rainfall-Induced Landslides (RIL); validation was by ROC analysis. Our results showed that WRF does not represent the spatial variability of the precipitation. This situation was resolved by bias correcting. Specifically, the PP_M4a method with Bernoulli distribution for the occurrence and Gamma for the intensity produced lower MAE and RMSE values and higher correlation values. Finally, our RILEWS had a high predicting capacity with an AUC of 0.80 using daily precipitation data and slope. We conclude that our methodology is suitable at an operational level in the Southern Andes. Our contribution could become a useful tool in the mitigation of impacts related to climate change.

Highlights

  • Rainfall-Induced Landslides (RIL) are one of the most frequent and dangerous natural hazards

  • This work evaluated a new Rainfall-Induced Landslide Early Warning Systems (RILEWS) based on two logistic models and forced by geomorphological and atmospheric conditions on a mesoscale in the Southern Andes

  • This work evaluated the implementation of a RILEWS based on a logistic model and forced by geomorphological and atmospheric conditions in the Southern Andes

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Summary

Introduction

Rainfall-Induced Landslides (RIL) are one of the most frequent and dangerous natural hazards. They can affect critical infrastructure and highways in populated areas (Chikalamo et al, 2020; Fustos et al, 2020a; Peruccacci et al, 2017). The occurrence of RIL events has increased with devastating effects, including loss of human life and destruction of the natural and urban environment (Marjanović et al, 2018). In South America, RIL has caused high social 30 and economic impacts; they require better evaluation in future (Sepulveda & Petley, 2015). Discussion started: 8 November 2021 c Author(s) 2021.

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