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Finite element model updating using bayesian framework and modal properties

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dc.contributor.author Marwala, T
dc.contributor.author Sibisi, S
dc.date.accessioned 2008-05-08T07:25:45Z
dc.date.available 2008-05-08T07:25:45Z
dc.date.issued 2005-01
dc.identifier.citation Marwala, T and Sibisi, S. 2005. Finite element model updating using bayesian framework and modal properties. Journal of Aircraft, Vol. 42(1), pp. 275-278. en
dc.identifier.issn 0021-8669
dc.identifier.uri http://hdl.handle.net/10204/2242
dc.description.abstract Finite element (FE) models are widely used to predict the dynamic characteristics of aerospace structures. These models often give results that differ from measured results and therefore need to be updated to match measured results. Some of the updating techniques that have been proposed to date use time, modal, frequency, and time-frequency domain data. In this Note, we use the modal domain data to update the FE model. A literature review on FE updating reveals that the updating problem has been framed mainly in the maximum-likelihood framework. Even though this framework has been applied successfully in industry, it has the following shortcomings: it does not offer the user confidence intervals for solutions it gives; there is no philosophical explanation of the regularization terms that are used to control the complexity of the updated model; and it cannot handle the inherent ill-conditioning and nonuniqueness of the FE updating problem. In this Note the Bayesian framework is adopted to address the shortcomings explained above. The Bayesian framework has been found to offer several advantages over maximum-likelihood methods in areas closely mirroring FE updating.` This Note seeks to address the following issues: 1) how prior information is incorporated into the FE model updating problem and 2) how to apply the Bayesian framework to update FE models to match experimentally measured modal properties (i.e., natural frequencies and mode shapes) to modal properties calculated from the FE model of a beam. In this Note, Markov chain Monte Carlo (MCMC) simulation is used to sample the probability of the updating parameters in light of the measured modal properties. This probability is known as the posterior probability. The Metropolis algorithm (see Ref. 6) is used as an acceptance criterion when the posterior probability is sampled. en
dc.language.iso en en
dc.publisher American Institute of Aeronautics and Astronautics en
dc.subject Vibration mode en
dc.subject Finite element method en
dc.subject Dynamic structural analysis en
dc.subject Bayesian analysis en
dc.subject Maximum likelihood estimates en
dc.subject Time-frequency analysis en
dc.subject Markov chains en
dc.subject Structural beams en
dc.subject Monte Carlo methods en
dc.subject Resonant frequency en
dc.title Finite element model updating using bayesian framework and modal properties en
dc.type Article en
dc.identifier.apacitation Marwala, T., & Sibisi, S. (2005). Finite element model updating using bayesian framework and modal properties. http://hdl.handle.net/10204/2242 en_ZA
dc.identifier.chicagocitation Marwala, T, and S Sibisi "Finite element model updating using bayesian framework and modal properties." (2005) http://hdl.handle.net/10204/2242 en_ZA
dc.identifier.vancouvercitation Marwala T, Sibisi S. Finite element model updating using bayesian framework and modal properties. 2005; http://hdl.handle.net/10204/2242. en_ZA
dc.identifier.ris TY - Article AU - Marwala, T AU - Sibisi, S AB - Finite element (FE) models are widely used to predict the dynamic characteristics of aerospace structures. These models often give results that differ from measured results and therefore need to be updated to match measured results. Some of the updating techniques that have been proposed to date use time, modal, frequency, and time-frequency domain data. In this Note, we use the modal domain data to update the FE model. A literature review on FE updating reveals that the updating problem has been framed mainly in the maximum-likelihood framework. Even though this framework has been applied successfully in industry, it has the following shortcomings: it does not offer the user confidence intervals for solutions it gives; there is no philosophical explanation of the regularization terms that are used to control the complexity of the updated model; and it cannot handle the inherent ill-conditioning and nonuniqueness of the FE updating problem. In this Note the Bayesian framework is adopted to address the shortcomings explained above. The Bayesian framework has been found to offer several advantages over maximum-likelihood methods in areas closely mirroring FE updating.` This Note seeks to address the following issues: 1) how prior information is incorporated into the FE model updating problem and 2) how to apply the Bayesian framework to update FE models to match experimentally measured modal properties (i.e., natural frequencies and mode shapes) to modal properties calculated from the FE model of a beam. In this Note, Markov chain Monte Carlo (MCMC) simulation is used to sample the probability of the updating parameters in light of the measured modal properties. This probability is known as the posterior probability. The Metropolis algorithm (see Ref. 6) is used as an acceptance criterion when the posterior probability is sampled. DA - 2005-01 DB - ResearchSpace DP - CSIR KW - Vibration mode KW - Finite element method KW - Dynamic structural analysis KW - Bayesian analysis KW - Maximum likelihood estimates KW - Time-frequency analysis KW - Markov chains KW - Structural beams KW - Monte Carlo methods KW - Resonant frequency LK - https://researchspace.csir.co.za PY - 2005 SM - 0021-8669 T1 - Finite element model updating using bayesian framework and modal properties TI - Finite element model updating using bayesian framework and modal properties UR - http://hdl.handle.net/10204/2242 ER - en_ZA


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