Framework for risk assessment of economic loss from structures damaged by rainfall-induced landslides using machine learning
Hiroki Ishibashi
Abstract
Given the increased frequency of extreme rainfall events, pre-disaster countermeasures against landslides triggered by heavy rainfall are important to enhance disaster resilience.This study presents a methodology for economic risk assessment of structures affected by rainfall-induced landslides using machine learning (ML).Random Forest and LightGBM algorithms were applied to develop ML-based landslide prediction models considering the spatial distributions of landslide conditioning and triggering factors.The rainfall index was calculated considering the temporal variation in rainfall and was used as a feature associated with rainfall intensity.The rainfall hazard curve, representing the relationship between the rainfall index and its annual exceedance probability, was statistically estimated using a generalised extreme value distribution.Rainfall-induced landslide susceptibility was assessed using an ML-based landslide prediction model and rainfall hazard curve.Finally, the risk curve associated with the economic loss from structures damaged by rainfall-induced landslides was estimated based on landslide susceptibility and structure distribution maps.In this study, LightGBM showed better prediction performance for evaluating rainfall-induced landslide susceptibility than Random Forest.An illustrative example is presented to demonstrate that the proposed methodology can be used to develop an appropriate risk-based disaster mitigation strategy.