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Push ‘o ver: in situ pushover tests on as built and strengthened existing brickwork constructions

Authors :
Michele Morici
Laura Gioiella
Fabio Micozzi
Alessandro Zona
Allen Dudine
Salvatore Grassia
Carlos Roberto Passerino
Simone Ciotti
Luca Falò
Domenico Liberatore
Luigi Sorrentino
Giacomo Buffarini
Paolo Clemente
Morici, M.
Gioiella, L. Micozzi F.
Zona, A.
Dudine, A.
Grassia, S.
Passerino, C. R.
Ciotti, S.
Falò, L.
Liberatore, D.
Sorrentino, L.
Buffarini, G.
Clemente, P.
Source :
Procedia Structural Integrity. 44:830-837
Publication Year :
2023
Publisher :
Elsevier BV, 2023.

Abstract

This paper proposes an innovative data-driven vulnerability model for the classification of the existing residential building stock, by clustering observational damage data gathered after the 2009 L’Aquila earthquake. The proposed model preserves the conceptual framework at the basis of the macroseismic approach, which allows for a thorough vulnerability classification of the built environment by resorting to vulnerability classes and by accounting for the uncertain association of building typologies to vulnerability classes. Novel aspects of this study are the adoption of peak ground acceleration for the ground motion characterisation, which allows for overcoming possible limitations related to the use of macroseismic intensity, and the use of unsupervised machine learning techniques for removing subjectivity in the definition of vulnerability classes. A probabilistic framework is then set up allowing for the attribution of a given building typology to multiple vulnerability classes, based on an ad- hoc strategy, involving the use of probability theory and using empirically-derived typological fragility functions as a target. The use of a detailed post-earthquake survey form also allows for an improved definition of building types representative of the Italian building stock

Details

ISSN :
24523216
Volume :
44
Database :
OpenAIRE
Journal :
Procedia Structural Integrity
Accession number :
edsair.doi.dedup.....408761a7f7ef51ce824b59e8f8b2a8d4