An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions

Aiming at the problems that Markov chain Monte Carlo algorithm is not easy to converge, has high rejection rate, and is easy to be disturbed by the noise when the parameter dimension is high, an improved model updating method combining the singular values of frequency response functions and the beet...

Full description

Bibliographic Details
Main Authors: Hong Yin, Zenghui Wang, Mingming Cao, Zhenrui Peng, Kangli Dong
Format: Article
Language:English
Published: Hindawi Limited 2021-01-01
Series:Mathematical Problems in Engineering
Online Access:http://dx.doi.org/10.1155/2021/5543549
id doaj-51944e54f5d54ecea806d56fc14a3774
record_format Article
spelling doaj-51944e54f5d54ecea806d56fc14a37742021-05-10T00:26:42ZengHindawi LimitedMathematical Problems in Engineering1563-51472021-01-01202110.1155/2021/5543549An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response FunctionsHong Yin0Zenghui Wang1Mingming Cao2Zhenrui Peng3Kangli Dong4School of Mechanical EngineeringSchool of Mechanical EngineeringSchool of Mechanical EngineeringSchool of Mechanical EngineeringCollege of Biomedical Engineering & Instrument ScienceAiming at the problems that Markov chain Monte Carlo algorithm is not easy to converge, has high rejection rate, and is easy to be disturbed by the noise when the parameter dimension is high, an improved model updating method combining the singular values of frequency response functions and the beetle antennae search algorithm is proposed. Firstly, the Latin hypercube sampling is used to extract the training samples. The Hankel matrix is reconstructed using the calculated frequency response functions and is decomposed by singular value decomposition. The effective singular values are retained to represent the frequency response functions. Secondly, according to the training samples and the corresponding singular values, the support vector machine surrogate model is fitted and its accuracy is tested. Then, the posterior probability distribution of parameters is estimated by introducing the beetle antennae search algorithm on the basis of standard Metropolis–Hastings algorithm to improve the performance of Markov chains and the ergodicity of samples. The results of examples show that the Markov chains have better overall performance and the acceptance rate of candidate samples is increased after updating. Even if the Gaussian white noise is introduced into the test frequency response functions under the single and multiple working damage conditions, satisfactory updating results can also be obtained.http://dx.doi.org/10.1155/2021/5543549
collection DOAJ
language English
format Article
sources DOAJ
author Hong Yin
Zenghui Wang
Mingming Cao
Zhenrui Peng
Kangli Dong
spellingShingle Hong Yin
Zenghui Wang
Mingming Cao
Zhenrui Peng
Kangli Dong
An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions
Mathematical Problems in Engineering
author_facet Hong Yin
Zenghui Wang
Mingming Cao
Zhenrui Peng
Kangli Dong
author_sort Hong Yin
title An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions
title_short An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions
title_full An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions
title_fullStr An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions
title_full_unstemmed An Improved Finite Element Model Updating Method Based on the Singular Values of Frequency Response Functions
title_sort improved finite element model updating method based on the singular values of frequency response functions
publisher Hindawi Limited
series Mathematical Problems in Engineering
issn 1563-5147
publishDate 2021-01-01
description Aiming at the problems that Markov chain Monte Carlo algorithm is not easy to converge, has high rejection rate, and is easy to be disturbed by the noise when the parameter dimension is high, an improved model updating method combining the singular values of frequency response functions and the beetle antennae search algorithm is proposed. Firstly, the Latin hypercube sampling is used to extract the training samples. The Hankel matrix is reconstructed using the calculated frequency response functions and is decomposed by singular value decomposition. The effective singular values are retained to represent the frequency response functions. Secondly, according to the training samples and the corresponding singular values, the support vector machine surrogate model is fitted and its accuracy is tested. Then, the posterior probability distribution of parameters is estimated by introducing the beetle antennae search algorithm on the basis of standard Metropolis–Hastings algorithm to improve the performance of Markov chains and the ergodicity of samples. The results of examples show that the Markov chains have better overall performance and the acceptance rate of candidate samples is increased after updating. Even if the Gaussian white noise is introduced into the test frequency response functions under the single and multiple working damage conditions, satisfactory updating results can also be obtained.
url http://dx.doi.org/10.1155/2021/5543549
work_keys_str_mv AT hongyin animprovedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT zenghuiwang animprovedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT mingmingcao animprovedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT zhenruipeng animprovedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT kanglidong animprovedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT hongyin improvedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT zenghuiwang improvedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT mingmingcao improvedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT zhenruipeng improvedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
AT kanglidong improvedfiniteelementmodelupdatingmethodbasedonthesingularvaluesoffrequencyresponsefunctions
_version_ 1721453814219800576