Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes
Operational modal analysis (OMA) is increasingly applied to identify the modal properties of a constructed structure for its high economy in implementation. Though great achievement has been made in OMA, it is still challenging in the scenario of multiple setup data with close modes, due to the need...
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sg-ntu-dr.10356-1444842020-11-06T07:51:55Z Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes Zhu, Zuo Au, Siu-Kui Li, Binbin Xie, Yan-Long School of Civil and Environmental Engineering UK Engineering & Physical Research Council Institute of Catastrophe Risk Management (ICRM) Engineering::Civil engineering Operational Modal Analysis Field Test Operational modal analysis (OMA) is increasingly applied to identify the modal properties of a constructed structure for its high economy in implementation. Though great achievement has been made in OMA, it is still challenging in the scenario of multiple setup data with close modes, due to the need to assemble the global mode shapes and the intervention of closemodes, especially when the data quality is low in some setups. A Bayesian approach is developed in this paper to compute the most probable value (MPV) of modal parameters incorporating data from multiple setups and multiple (possibly close) modes. It employs an expectation-maximisation algorithm which admits an analytical update of modal parameters except the frequencies and damping ratios, thus allowing an efficient computation of the MPV, usually in the order of tens of seconds for each frequency band even when there are a large number of degrees of freedom and long data. A comprehensive study based on synthetic and field test data is presented to illustrate the performance of the proposed algorithm. Comparing with three existing algorithms, it shows the quality of the identified global mode shape is good and insensitive to the method used when the data quality is consistently high in all setups; However, only the proposed Bayesian approach yields consistently reasonable results when the data quality is low in some setups. Accepted version This work is funded by the UK Engineering & Physical Sciences Research Council (EP/N017897/1). In addition, the first author is supported by the Joint University of Liverpool/China Scholarship Council Scholarship, the second author by grant SUG/4 at the Nanyang Technological University, Singapore, the third and fourth authors by the ZJU-UIUC Institute of Zhejiang University (130000-171207704/018). 2020-11-06T07:51:55Z 2020-11-06T07:51:55Z 2021 Journal Article Zhu, Z., Au, S.-K., Li, B. & Xie, Y.-L. (2021). Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes. Mechanical Systems and Signal Processing, 150, 107261-. doi:10.1016/j.ymssp.2020.107261 0888-3270 https://hdl.handle.net/10356/144484 10.1016/j.ymssp.2020.107261 150 107261 en EP/N017897/1 SUG/4 (C120032000) 130000-171207704/018 Mechanical Systems and Signal Processing © 2021 Elsevier Ltd. All rights reserved. This paper was published in Mechanical Systems and Signal Processing and is made available with permission of Elsevier Ltd. application/pdf |
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Engineering::Civil engineering Operational Modal Analysis Field Test Zhu, Zuo Au, Siu-Kui Li, Binbin Xie, Yan-Long Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
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Operational modal analysis (OMA) is increasingly applied to identify the modal properties of a constructed structure for its high economy in implementation. Though great achievement has been made in OMA, it is still challenging in the scenario of multiple setup data with close modes, due to the need to assemble the global mode shapes and the intervention of closemodes, especially when the data quality is low in some setups. A Bayesian approach is developed in this paper to compute the most probable value (MPV) of modal parameters incorporating data from multiple setups and multiple (possibly close) modes. It employs an expectation-maximisation algorithm which admits an analytical update of modal parameters except the frequencies and damping ratios, thus allowing an efficient computation of the MPV, usually in the order of tens of seconds for each frequency band even when there are a large number of degrees of freedom and long data. A comprehensive study based on synthetic and field test data is presented to illustrate the performance of the proposed algorithm. Comparing with three existing algorithms, it shows the quality of the identified global mode shape is good and insensitive to the method used when the data quality is consistently high in all setups; However, only the proposed Bayesian approach yields consistently reasonable results when the data quality is low in some setups. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Zhu, Zuo Au, Siu-Kui Li, Binbin Xie, Yan-Long |
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Article |
author |
Zhu, Zuo Au, Siu-Kui Li, Binbin Xie, Yan-Long |
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Zhu, Zuo |
title |
Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
title_short |
Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
title_full |
Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
title_fullStr |
Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
title_full_unstemmed |
Bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
title_sort |
bayesian operational modal analysis with multiple setups and multiple (possibly close) modes |
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2020 |
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https://hdl.handle.net/10356/144484 |
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