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Preliminary approach to predict the reactivation of long-term kinematics landslides through noval synergistic stacked deep learning approach

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posted on 2025-11-20, 14:41 authored by Mohammad Amin KhaliliMohammad Amin Khalili, B Voosoghi, S Madadi, G Pappalardo, D Calcaterra, D Di Martire
Landslides pose serious risks to both natural landscapes and urban infrastructure, often triggered by complex interactions between geological conditions and meteorological events such as intense rainfall. This study presents a novel stacked deep learning framework that integrates Graph Convolutional Networks (GCN) with GCN-based Long Short-Term Memory (GCN-LSTM) models to improve the prediction of landslide-induced surface deformation. The case study focuses on the Randazzo Landslide in northeastern Sicily, a region with intricate geological structures and recurrent landslide events. We utilize high-resolution satellite radar data from the COSMO-SkyMed mission, along with comprehensive geological, geomorphological, and rainfall datasets, to capture the spatial and temporal patterns governing landslide behavior. The spatial component of the model leverages GCN to extract non-Euclidean spatial relationships among predisposing factors, while the temporal component applies GCN-LSTM to model the progression of rainfall and ground deformation over time, as obtained through Multi-temporal Interferometric Synthetic Aperture Radar analysis. Outputs from both base models are fed into a GCN-based meta-model, which synthesizes these features to enhance prediction accuracy. The framework was trained and validated on data collected between 2011 and 2014, demonstrating strong predictive performance in terms of Mean Absolute Error, Root Mean Squared Error, and R-squared metrics. Results indicate that the stacked model outperforms standalone GCN and GCN-LSTM implementations. This methodology provides a scalable, adaptable tool for forecasting landslide deformation and contributes to the advancement of early warning systems and hazard management strategies through the fusion of remote sensing data and advanced deep learning techniques.<p></p>

History

Author affiliation

University of Leicester College of Science & Engineering Geography, Geology & Environment

Version

  • VoR (Version of Record)

Published in

Stochastic Environmental Research and Risk Assessment

Publisher

Springer Science and Business Media LLC

issn

1436-3240

eissn

1436-3259

Copyright date

2025

Available date

2025-11-20

Language

en

Deposited by

Dr Mohammad Amin Khalili

Deposit date

2025-11-14

Data Access Statement

The datasets used and/or analysed during the current study are available from the corresponding author upon reasonable request.

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