Plinius Conference Abstracts
Vol. 18, Plinius18-27, 2024, updated on 11 Jul 2024
https://doi.org/10.5194/egusphere-plinius18-27
18th Plinius Conference on Mediterranean Risks
© Author(s) 2024. This work is distributed under
the Creative Commons Attribution 4.0 License.
Oral | Monday, 30 Sep, 11:30–11:45 (CEST)| Lecture room

Leveraging AI for Automated Structural Stability Risk Assessment in Historical Centers

Nikolaos Schetakis1, Napoleon Papoutsakis2, Merope Manataki2, Nikos Papadopoulos3, Georgios E. Stavroulakis1, and Alessio Di Iorio2,4
Nikolaos Schetakis et al.
  • 1Computational Mechanics and Optimization Laboratory, School of Production Engineering and Management, Technical University of Crete, 73100 Chania, Greece
  • 2Alma-Sistemi Srl, 00012 Guidonia, Italy
  • 3Lab of Geophysical Satellite Remote Sensing and Archaeoenvironment, Institute for Mediterranean Studies, Foundation for Research and Technology – Hellas, Rethymno, Greece
  • 4Quantum Innovation Pc., 73100 Chania, Greece

This research investigates the assessment of structural stability risks in buildings during natural disasters, with a particular focus on earthquakes, within historical centers. The objective is to create an accessible platform that can predictively create damage maps for blocks of buildings and large structures, enabling the prediction of damage and its impact on Cultural Heritage (CH) stability. The project seeks to generate risk maps for CH, emphasizing predictive damage mapping before natural disaster events occur under a variety of event scenarios. Methodologies have been devised to discern efficient and automated tools for harmonizing data, criteria, and indicators, thereby monitoring the influence of environmental changes on CH assets, encompassing structural stability and deterioration processes. This involves the integration of ground data (e.g., geotechnical and geological information), site-scale monitoring, satellite data (InSAR), and risk forecasting models (seismic models) to produce user-driven products like deformation maps, vulnerability assessments, and damage maps. Using AI-assisted models, the platform aims to enable ongoing inspection and monitoring of Cultural Heritage (CH) buildings for updating the vulnerability assessment.

How to cite: Schetakis, N., Papoutsakis, N., Manataki, M., Papadopoulos, N., Stavroulakis, G. E., and Di Iorio, A.: Leveraging AI for Automated Structural Stability Risk Assessment in Historical Centers, 18th Plinius Conference on Mediterranean Risks, Chania, Greece, 30 Sep–3 Oct 2024, Plinius18-27, https://doi.org/10.5194/egusphere-plinius18-27, 2024.