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An improved perturbation method for stochastic finite element model updating

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TLDR
In this paper, an improved perturbation method is developed for the statistical identification of structural parameters by using the measured modal parameters with randomness, which enables structural design and analysis, damage detection, condition assessment, and evaluation in the framework of probability and statistics.
Abstract
In this paper, an improved perturbation method is developed for the statistical identification of structural parameters by using the measured modal parameters with randomness. On the basis of the first-order perturbation method and sensitivity-based finite element (FE) model updating, two recursive systems of equations are derived for estimating the first two moments of random structural parameters from the statistics of the measured modal parameters. Regularization technique is introduced to alleviate the ill-conditioning in solving the equations. The numerical studies of stochastic FE model updating of a truss bridge are presented to verify the improved perturbation method under three different types of uncertainties, namely natural randomness, measurement noise, and the combination of the two. The results obtained using the perturbation method are in good agreement with, although less accurate than, those obtained using the Monte Carlo simulation (MCS) method. It is also revealed that neglecting the correlation of the measured modal parameters may result in an unreliable estimation of the covariance matrix of updating parameters. The statistically updated FE model enables structural design and analysis, damage detection, condition assessment, and evaluation in the framework of probability and statistics. Copyright © 2007 John Wiley & Sons, Ltd.

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Citations
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Journal ArticleDOI

The sensitivity method in finite element model updating: A tutorial

TL;DR: A basic introduction to the most important procedures of computational model updating is provided, including tutorial examples to reinforce the reader’s understanding and a large scale model updating example of a helicopter airframe.
Journal ArticleDOI

Perturbation methods for the estimation of parameter variability in stochastic model updating

TL;DR: In this paper, the problem of model updating in the presence of test-structure variability is addressed and two perturbation methods are developed for the estimation of the first and second statistical moments of randomised updating parameters from measured variability in modal responses (e.g. natural frequencies and mode shapes).
Journal ArticleDOI

Interval model updating with irreducible uncertainty using the Kriging predictor

TL;DR: In this paper, the Kriging predictor is chosen as the meta-model and is found to be capable of predicting the regions of input and output parameter variations with very good accuracy, which enables the use of updating parameters that are difficult to use by conventional correction of the finite element model.
Journal ArticleDOI

Stochastic model updating—Covariance matrix adjustment from uncertain experimental modal data

TL;DR: In this paper, a method to adjust design parameter means and their related covariance matrix from multiple sets of experimental modal data is presented. But this method is restricted to a single set of test data.
References
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Book

Finite Element Model Updating in Structural Dynamics

TL;DR: A comparison of Numerical Data with Test Results and Iterative Methods Using Modal Data for Model Updating shows that the former is more accurate than the latter.
Journal ArticleDOI

Model Updating In Structural Dynamics: A Survey

TL;DR: It is the authors' hope that this work will prove to be of value, especially to those who are getting acquainted with the research base and aim to participate in the application of model updating in industry, where a pressing need exists.
Journal ArticleDOI

Updating Models and Their Uncertainties. I: Bayesian Statistical Framework

TL;DR: The problem of updating a structural model and its associated uncertainties by utilizing dynamic response data is addressed using a Bayesian statistical framework that can handle the inherent ill-conditioning and possible nonuniqueness in model updating applications.
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Rates of change of eigenvalues and eigenvectors.

TL;DR: Exact expressions for rates of change of eigenvalues and eigenvector to facilitate computerized design of complex structures are presented.
Journal ArticleDOI

One-year monitoring of the Z24-Bridge : environmental effects versus damage events

TL;DR: In this article, the authors used the analysis of vibration measurements as a tool for health monitoring of bridges, and the problem of separating abnormal changes from normal changes in the dynamic behaviour was identified.
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