According to a census by the Catholic Church, Italy’s territory hosts more than sixty thousand buildings of worship. Most of these buildings were built between the first and the nineteenth century A.D., with a load-bearing masonry structure that proved to be particularly prone to damage due to natural hazards. This investigation explores the use of clustering algorithms to identify and cluster typologies of buildings and archetypes. The aim is to define statistical models for the geometric and mechanical properties, to delineate a set of reference structures representative of the whole building stock, and finally select ‘indicator attributes’ that can be used in developing seismic and landslide vulnerability indicators. The proposed methodology is applied to a specific portfolio of seventy-one churches in the north-western area of the Tuscany region (Italy). The main geometric and mechanical features of the churches included in the portfolio are gathered using a new simplified Rapid Visual Survey form. A procedure is then proposed to define representative archetypes using three well-known clustering algorithms (K-Means, Gaussian Mixture Models, and Kernel-density). When analysed together, the identified archetypes can portray the variability of the geometric and mechanical properties in the selected portfolio, constituting a basis for developing new vulnerability models.

Cluster analysis for informing vulnerability assessment of masonry churches to natural hazards / Del Carlo, Federica; Caprili, Silvia; Miguel Ferreira, Tiago; Roca, Pere; Uzielli, Marco. - In: BULLETIN OF EARTHQUAKE ENGINEERING. - ISSN 1570-761X. - ELETTRONICO. - (2025), pp. 0-0. [10.1007/s10518-025-02116-x]

Cluster analysis for informing vulnerability assessment of masonry churches to natural hazards

Del Carlo, Federica
;
Uzielli, Marco
Methodology
2025

Abstract

According to a census by the Catholic Church, Italy’s territory hosts more than sixty thousand buildings of worship. Most of these buildings were built between the first and the nineteenth century A.D., with a load-bearing masonry structure that proved to be particularly prone to damage due to natural hazards. This investigation explores the use of clustering algorithms to identify and cluster typologies of buildings and archetypes. The aim is to define statistical models for the geometric and mechanical properties, to delineate a set of reference structures representative of the whole building stock, and finally select ‘indicator attributes’ that can be used in developing seismic and landslide vulnerability indicators. The proposed methodology is applied to a specific portfolio of seventy-one churches in the north-western area of the Tuscany region (Italy). The main geometric and mechanical features of the churches included in the portfolio are gathered using a new simplified Rapid Visual Survey form. A procedure is then proposed to define representative archetypes using three well-known clustering algorithms (K-Means, Gaussian Mixture Models, and Kernel-density). When analysed together, the identified archetypes can portray the variability of the geometric and mechanical properties in the selected portfolio, constituting a basis for developing new vulnerability models.
2025
0
0
Goal 15: Life on land
Goal 11: Sustainable cities and communities
Del Carlo, Federica; Caprili, Silvia; Miguel Ferreira, Tiago; Roca, Pere; Uzielli, Marco
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Utilizza questo identificatore per citare o creare un link a questa risorsa: https://hdl.handle.net/2158/1414675
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