Landslides triggered by intense or prolonged rainfall are a growing threat in the context of climate change. Physically based models are commonly used to estimate slope stability under varying hydrogeological conditions. However, their high computational cost may limit their use in time-sensitive risk assessment and decision-making scenarios. We propose a novel application of artificial intelligence (AI) for planning in safety-critical domains. In particular, our approach accelerates the prediction of key slope stability indicators—the factor of safety, the depth of the sliding surface, and the final position of the water table—under various rainfall events. Using a large dataset of more than 16,000 simulations, we train regression models that quickly approximate the results of complex numerical analyses across various slope geometries, soil properties, and hydrological conditions. The proposed models can perform rapid risk assessment for rainfall-induced landslides, exploring various rainfall scenarios and slope responses in tight timeframes. This helps select mitigation strategies that prioritize safety while considering reliability, feasibility constraints, and the likelihood of rainfall events. Our approach is thus key for complex, real-world AI planning in hydrogeological risk management, in particular considering the context of climate change, which will increase the number of sites requiring effective protective measures and rapid intervention in years to come.

AI-based simulation surrogates for planning rainfall-induced landslide mitigation

Ignacio Giomi
Writing – Original Draft Preparation
;
Evelina Volpe
Data Curation
;
Elisabetta Cattoni
Conceptualization
2025-01-01

Abstract

Landslides triggered by intense or prolonged rainfall are a growing threat in the context of climate change. Physically based models are commonly used to estimate slope stability under varying hydrogeological conditions. However, their high computational cost may limit their use in time-sensitive risk assessment and decision-making scenarios. We propose a novel application of artificial intelligence (AI) for planning in safety-critical domains. In particular, our approach accelerates the prediction of key slope stability indicators—the factor of safety, the depth of the sliding surface, and the final position of the water table—under various rainfall events. Using a large dataset of more than 16,000 simulations, we train regression models that quickly approximate the results of complex numerical analyses across various slope geometries, soil properties, and hydrological conditions. The proposed models can perform rapid risk assessment for rainfall-induced landslides, exploring various rainfall scenarios and slope responses in tight timeframes. This helps select mitigation strategies that prioritize safety while considering reliability, feasibility constraints, and the likelihood of rainfall events. Our approach is thus key for complex, real-world AI planning in hydrogeological risk management, in particular considering the context of climate change, which will increase the number of sites requiring effective protective measures and rapid intervention in years to come.
2025
Inglese
BALDASSINI MICHELE - PISTOLESI FRANCESCO - GIOMI IGNACIO - VOLPE EVELINA - CATTONI ELISABETTA
CEUR Workshop Proceedings
ECAI Workshop on AI-based Planning for Complex Real-World Applications
ELETTRONICO
1
ECAI Workshop on AI-based Planning for Complex Real-World Applications, October 25, 2025, Bologna, IT
4103
1
11
11
https://ceur-ws.org/Vol-4103/paper8.pdf
CEUR-WS
Ottobre 2025
Bologna
Internazionale
Artificial intelligence, climate change, decision support system, disaster resilience planning, slope stability
none
Baldassini, Michele; Pistolesi, Francesco; Giomi, Ignacio; Volpe, Evelina; Cattoni, Elisabetta
273
info:eu-repo/semantics/conferenceObject
5
4 Contributo in Atti di Convegno (Proceeding)::4.1 Contributo in Atti di convegno
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11389/86755
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