Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm
Abstract This study investigates the application of operational modal analysis along with bees optimization algorithm for updating the finite element model of structures. Bees algorithm applies instinctive behavior of honeybees as they look for nectar of flowers. The parameters that needed to be updated are uncertain parameters such as geometry and material properties of the structure. To determine these uncertain parameters, local and global sensitivity analyses have been performed. An objective function is defined based on the sum of the squared errors between the natural frequencies obtained from operational modal analysis and finite element method. The natural frequencies of physical structure are determined by stochastic subspace identification method which is considered as a strong and efficient method in operational modal analysis. To verify the accuracy of this method, the proposed algorithm is implemented on a three-story structure to update parameters of its finite element model. Moreover, to study the efficiency of bees algorithm, its results are compared with those of the particle swarm optimization, and Nelder and Mead methods. The comparison indicates that this algorithm leads more accurate results with faster convergence.
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Associação Brasileira de Ciências Mecânicas
2018
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oai:scielo:S1679-782520180002005012018-09-13Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization AlgorithmAlimouri,PouyanMoradi,ShapourChinipardaz,Rahim Vibration analysis Finite element model updating Operational modal analysis Stochastic subspace identification Bees algorithm Sensitivity analysis Abstract This study investigates the application of operational modal analysis along with bees optimization algorithm for updating the finite element model of structures. Bees algorithm applies instinctive behavior of honeybees as they look for nectar of flowers. The parameters that needed to be updated are uncertain parameters such as geometry and material properties of the structure. To determine these uncertain parameters, local and global sensitivity analyses have been performed. An objective function is defined based on the sum of the squared errors between the natural frequencies obtained from operational modal analysis and finite element method. The natural frequencies of physical structure are determined by stochastic subspace identification method which is considered as a strong and efficient method in operational modal analysis. To verify the accuracy of this method, the proposed algorithm is implemented on a three-story structure to update parameters of its finite element model. Moreover, to study the efficiency of bees algorithm, its results are compared with those of the particle swarm optimization, and Nelder and Mead methods. The comparison indicates that this algorithm leads more accurate results with faster convergence.info:eu-repo/semantics/openAccessAssociação Brasileira de Ciências MecânicasLatin American Journal of Solids and Structures v.15 n.2 20182018-01-01info:eu-repo/semantics/articletext/htmlhttp://old.scielo.br/scielo.php?script=sci_arttext&pid=S1679-78252018000200501en10.1590/1679-78254189 |
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Alimouri,Pouyan Moradi,Shapour Chinipardaz,Rahim |
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Alimouri,Pouyan Moradi,Shapour Chinipardaz,Rahim Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm |
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Alimouri,Pouyan Moradi,Shapour Chinipardaz,Rahim |
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Alimouri,Pouyan |
title |
Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm |
title_short |
Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm |
title_full |
Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm |
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Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm |
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Updating Finite Element Model Using Stochastic Subspace Identification Method and Bees Optimization Algorithm |
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updating finite element model using stochastic subspace identification method and bees optimization algorithm |
description |
Abstract This study investigates the application of operational modal analysis along with bees optimization algorithm for updating the finite element model of structures. Bees algorithm applies instinctive behavior of honeybees as they look for nectar of flowers. The parameters that needed to be updated are uncertain parameters such as geometry and material properties of the structure. To determine these uncertain parameters, local and global sensitivity analyses have been performed. An objective function is defined based on the sum of the squared errors between the natural frequencies obtained from operational modal analysis and finite element method. The natural frequencies of physical structure are determined by stochastic subspace identification method which is considered as a strong and efficient method in operational modal analysis. To verify the accuracy of this method, the proposed algorithm is implemented on a three-story structure to update parameters of its finite element model. Moreover, to study the efficiency of bees algorithm, its results are compared with those of the particle swarm optimization, and Nelder and Mead methods. The comparison indicates that this algorithm leads more accurate results with faster convergence. |
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Associação Brasileira de Ciências Mecânicas |
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2018 |
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http://old.scielo.br/scielo.php?script=sci_arttext&pid=S1679-78252018000200501 |
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AT alimouripouyan updatingfiniteelementmodelusingstochasticsubspaceidentificationmethodandbeesoptimizationalgorithm AT moradishapour updatingfiniteelementmodelusingstochasticsubspaceidentificationmethodandbeesoptimizationalgorithm AT chinipardazrahim updatingfiniteelementmodelusingstochasticsubspaceidentificationmethodandbeesoptimizationalgorithm |
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