2024
DOI: 10.2514/1.j063611
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Data-Driven Bayesian Inference for Stochastic Model Identification of Nonlinear Aeroelastic Systems

Michael McGurk,
Adolphus Lye,
Ludovic Renson
et al.

Abstract: The objective of this work is to propose a data-driven Bayesian inference framework to efficiently identify parameters and select models of nonlinear aeroelastic systems. The framework consists of the use of Bayesian theory together with advanced kriging surrogate models to effectively represent the limit cycle oscillation response of nonlinear aeroelastic systems. Three types of sampling methods, namely, Markov chain Monte Carlo, transitional Markov chain Monte Carlo, and the sequential Monte Carlo sampler, a… Show more

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