Published April 22, 2025 | Version v1
Conference paper Open

Global Landslide Susceptibility Mapping Using Multi-Model Machine Learning Approaches on Geospatial Satellite Data

  • 1. EDMO icon University of Bari
  • 2. Consiglio Nazionale delle Ricerche
  • 3. ROR icon Yale University

Description

This study introduces a high-resolution, global landslide susceptibility model employing a multi-model machine learning framework.
Aiming to surpass the 2016 NASA model, the approach leverages an enhanced global landslide catalog (UGLC) for training, a global higher-accuracy 90m MERIT DEM, and over 100 global predictive variables encompassing topographic, geological, and environmental factors.
Developed on high-performance computing for operational efficiency and scalability, the model prioritizes reliability and interpretability to support future dynamic early warning systems, linking baseline susceptibility with real-time monitoring for improved disaster response in global landslide risk assessment.

Files

Mancino_et_al_2025_Global_Landslide_Susceptibility_Mapping_Using_Multi-Model_Machine_Learning_Approaches_on_Geospatial_Satellite_Data.pdf