A simplified model based on self-organized criticality framework for the seismic assessment of urban areas
A. Greco, A. Pluchino, L. Barbarossa, I. Cali\`o, F. Martinico, A., Rapisarda

TL;DR
This paper proposes a simplified, agent-based model rooted in the self-organized criticality framework to assess seismic vulnerability in urban areas, aiming to aid in planning strategies for seismic risk reduction.
Contribution
It introduces a novel agent-based earthquake model based on SOC principles, integrating GIS data for practical seismic vulnerability assessment of urban regions.
Findings
Model captures critical earthquake sequences affecting urban areas
Integration with GIS enables real-world data analysis
Provides a basis for seismic risk planning strategies
Abstract
The analysis of the seismic vulnerability of urban centres has received a great attention in the last century. In order to estimate the seismic vulnerability of a densely populated urban area, it would in principle be necessary to develop in-depth analyses for predicting the dynamic behaviour of the individual buildings and their structural aggregation. Such analyses, however, are extremely cost-intensive, require great processing time and above all expertise judgement. It is therefore very useful to define simplified rules for estimating the seismic vulnerability of whole urban areas. In the last decades, the Self-Organized Criticality (SOC) scenario has gained increasing credibility as a mathematical framework for explaining a large number of naturally occurring extreme events, from avalanches to earthquakes dynamics, from bubbles and crises in financial markets to the extinction of…
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Taxonomy
TopicsSeismic Performance and Analysis · Seismology and Earthquake Studies · Structural Health Monitoring Techniques
