An efficient approach for computing analytical non-parametric fragility curves

Altieri, Domenico and Patelli, Edoardo (2020) An efficient approach for computing analytical non-parametric fragility curves. Structural Safety, 85. 101956. ISSN 0167-4730

[img] Text (Altieri-Patelli-SS-2020-An-efficient-approach-for-computing-analytical-non-parametric-fragility)
Altieri_Patelli_SS_2020_An_efficient_approach_for_computing_analytical_non_parametric_fragility.pdf
Accepted Author Manuscript
Restricted to Repository staff only until 21 April 2021.
License: Creative Commons Attribution-NonCommercial-NoDerivatives 4.0 logo

Download (2MB) | Request a copy from the Strathclyde author

    Abstract

    Fragility curves are used in earthquake engineering for assessing the seismic vulnerability of structures or systems. Direct estimations of fragility curves by means of simulation-based approaches lead generally to relevant computational costs, especially when the failure region is characterized by small probabilities of occurrence. Simplified hypotheses are therefore introduced in the common practice to approximate the dependency between the structural response and the associated seismic intensity level. The study proposes a non-parametric methodology to estimate analytical fragility curves without specific assumptions on their final shape. The approach starts by identifying all the subsets characterized by the same values of the chosen seismic intensity measure parameter. Then, the failure region is mapped by means of a classification algorithm coupled with a polynomial kernel. Finally, the conditional failure probability is computed by associating the samples generated in each subset to the corresponding classification score. A stochastic earthquake model is employed to define the seismic dataset and the uncertainty associated with the ground motion records. Two case studies are analyzed in which the non-parametric methodology is compared against three popular parametric approaches and a reference solution. The proposed approach shows an overall higher accuracy and efficiency, especially in case of rare failure domains.