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Towards a Highly Efficient Monte Carlo Approach using a Koiter-type Reduced Order Model for Nonlinear Buckling Analyses of Cylindrical Shells
Publikationstyp
Conference Paper
Publikationsdatum
2022-01
Sprache
English
Citation
Science and Technology Forum and Exposition, AIAA SciTech Forum 2022
Contribution to Conference
Publisher DOI
Scopus ID
The current contribution shows how the stochastic distribution of the buckling load of a cylindrical shell induced by random geometric imperfections can be determined with Monte Carlo simulations at low computational cost by using reduced order models. Once the buckling modes and Koiter’s b-factors of a structure have been determined, nonlinear buckling analyses can be carried out very efficiently using a reduced order model. Given a set imperfection data, the current contribution shows how these can be described as a superposition of buckling modes. Thereby, the basis to generate random realizations of geometric imperfections is the same as the basis used for the reduced order approach. This allows determining the buckling load for any random realization within a Monte Carlo simulation at extremely low cost.