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Stochastic model reduction for robust dynamical characterization of structures with random parameters
Author(s) -
Martin Ghienne,
Claude Blanzé,
Luc Laurent
Publication year - 2017
Publication title -
comptes rendus mécanique
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 0.454
H-Index - 53
ISSN - 1873-7234
DOI - 10.1016/j.crme.2017.09.006
Subject(s) - eigenvalues and eigenvectors , computation , mathematics , random field , stochastic process , finite element method , random function , multivariate random variable , random element , reduction (mathematics) , mathematical optimization , algorithm , computer science , random variable , statistics , engineering , geometry , physics , structural engineering , quantum mechanics
International audienceIn this paper, we characterize random eigenspaces with a non-intrusive method based on the decoupling of random eigenvalues from their corresponding random eigenvectors. This method allows us to estimate the first statistical moments of the random eigenvalues of the system with a reduced number of deterministic finite element computations. The originality of this work is to adapt the method used to estimate each random eigenvalue depending on a global accuracy requirement. This allows us to ensure a minimal computational cost. The stochastic model of the structure is thus reduced by exploiting specific properties of random eigenvectors associated with the random eigenfrequencies being sought. An indicator with no additional computation cost is proposed to identify when the method needs to be enhanced. Finally, a simple three-beam frame and an industrial structure illustrate the proposed approach

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