Reliability updating of nonlinear dynamic system using strong vibration data

Reliability updating has become an essential tool to predict structural responses under dynamic loads. However, there are many uncertainties in structural properties and measurement error exists in the model. For this reason, the outcomes of the experimental and theoretical model are different. Henc...

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Main Author: Tee, Lay Sin
Other Authors: Cheung Sai Hung
Format: Final Year Project
Language:English
Published: 2017
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Online Access:http://hdl.handle.net/10356/72976
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Institution: Nanyang Technological University
Language: English
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spelling sg-ntu-dr.10356-729762023-03-03T17:10:34Z Reliability updating of nonlinear dynamic system using strong vibration data Tee, Lay Sin Cheung Sai Hung School of Civil and Environmental Engineering DRNTU::Engineering::Civil engineering Reliability updating has become an essential tool to predict structural responses under dynamic loads. However, there are many uncertainties in structural properties and measurement error exists in the model. For this reason, the outcomes of the experimental and theoretical model are different. Hence, the analytical models of the structures need to be updated based on the experimental results. In general, majority of the method uses model analysis to get unknown parameters. There are many methods available for the reliability updating. In this study, Bayesian theorem and Subset Simulation method are combined to quantify the uncertainties and errors in the model parameters. Here, Bayesian probabilistic methodology is integrated with probabilistic analysis tools for the purpose of updating the assessment of the robust reliability based on dynamic test data. However, evaluating the integral equation may be difficult if the product of the likelihood and prior is complex. For instance, the parameter space is high dimensional which requires computing high dimensional likelihoods. In order to solve the complicated computational problems, method for updating the structural reliability is proposed. The Subset Simulation method is adopted to solve the problem of dynamics system involving high dimensional parameters. In this project, the proposed Subset Simulation method will discuss the effectiveness in nonlinear dynamic system model updating. The algorithm will be applied upon a 5-storey shear building model. This model was tested based on 21 unknown parameters, which include elastic stiffness, yield limit, post-yield-stiffness ratio, damping ratio of each story and measurement error. It is observed that the Bayesian theorem with Subset Simulation technique will give a better estimate of unknown structural parameters that coincide to the actual values. Finally, the Subset Simulation method was performed to update 21 unknown parameters successfully. Bachelor of Engineering (Civil) 2017-12-18T03:15:42Z 2017-12-18T03:15:42Z 2017 Final Year Project (FYP) http://hdl.handle.net/10356/72976 en Nanyang Technological University 79 p. application/pdf
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic DRNTU::Engineering::Civil engineering
spellingShingle DRNTU::Engineering::Civil engineering
Tee, Lay Sin
Reliability updating of nonlinear dynamic system using strong vibration data
description Reliability updating has become an essential tool to predict structural responses under dynamic loads. However, there are many uncertainties in structural properties and measurement error exists in the model. For this reason, the outcomes of the experimental and theoretical model are different. Hence, the analytical models of the structures need to be updated based on the experimental results. In general, majority of the method uses model analysis to get unknown parameters. There are many methods available for the reliability updating. In this study, Bayesian theorem and Subset Simulation method are combined to quantify the uncertainties and errors in the model parameters. Here, Bayesian probabilistic methodology is integrated with probabilistic analysis tools for the purpose of updating the assessment of the robust reliability based on dynamic test data. However, evaluating the integral equation may be difficult if the product of the likelihood and prior is complex. For instance, the parameter space is high dimensional which requires computing high dimensional likelihoods. In order to solve the complicated computational problems, method for updating the structural reliability is proposed. The Subset Simulation method is adopted to solve the problem of dynamics system involving high dimensional parameters. In this project, the proposed Subset Simulation method will discuss the effectiveness in nonlinear dynamic system model updating. The algorithm will be applied upon a 5-storey shear building model. This model was tested based on 21 unknown parameters, which include elastic stiffness, yield limit, post-yield-stiffness ratio, damping ratio of each story and measurement error. It is observed that the Bayesian theorem with Subset Simulation technique will give a better estimate of unknown structural parameters that coincide to the actual values. Finally, the Subset Simulation method was performed to update 21 unknown parameters successfully.
author2 Cheung Sai Hung
author_facet Cheung Sai Hung
Tee, Lay Sin
format Final Year Project
author Tee, Lay Sin
author_sort Tee, Lay Sin
title Reliability updating of nonlinear dynamic system using strong vibration data
title_short Reliability updating of nonlinear dynamic system using strong vibration data
title_full Reliability updating of nonlinear dynamic system using strong vibration data
title_fullStr Reliability updating of nonlinear dynamic system using strong vibration data
title_full_unstemmed Reliability updating of nonlinear dynamic system using strong vibration data
title_sort reliability updating of nonlinear dynamic system using strong vibration data
publishDate 2017
url http://hdl.handle.net/10356/72976
_version_ 1759854178570600448