Bayesian modal identification method based on general coherence model for asynchronous ambient data
A Bayesian frequency domain method for modal identification using asynchronous ambient data has been proposed previously. It provides a flexible and economical way to conduct ambient vibration tests as time synchronisation among data channels is not required. To simplify computation, zero coherence...
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sg-ntu-dr.10356-1499902021-05-19T08:21:42Z Bayesian modal identification method based on general coherence model for asynchronous ambient data Zhu, Yi-Chen Au, Siu-Kui School of Civil and Environmental Engineering Engineering::Civil engineering Ambient Data Asynchronous Data A Bayesian frequency domain method for modal identification using asynchronous ambient data has been proposed previously. It provides a flexible and economical way to conduct ambient vibration tests as time synchronisation among data channels is not required. To simplify computation, zero coherence among synchronous data groups is assumed in the method, which inevitably introduces modelling error and lacks the ability of quantifying the synchronisation degree among different groups. To address these issues, a Bayesian modal identification method with a general coherence assumption among synchronisation groups is proposed in this paper. Computational difficulties are addressed and an efficient algorithm for determining the most probable values of modal properties is proposed. Synthetic and laboratory data examples are presented to validate the proposed method. It is also applied to modal identification of a full-scale ambient test, which illustrates the feasibility of the proposed method to real asynchronous data under field test configurations. For the cases investigated the proposed method does not lead to significant improvement in the identification accuracy of modal parameters compared to the method with zero coherence assumption. This is consistent with previous experience regarding the robustness of the zero coherence assumption and is now verified in this work. One may use the latter in practice for computational efficiency if the synchronisation degree among different groups is not demanded. Accepted version This paper is partially supported by UK Engineering & Physical Research Council (EP/N017897/1). The financial support is gratefully acknowledged. 2021-05-19T08:21:42Z 2021-05-19T08:21:42Z 2019 Journal Article Zhu, Y. & Au, S. (2019). Bayesian modal identification method based on general coherence model for asynchronous ambient data. Mechanical Systems and Signal Processing, 132, 194-210. https://dx.doi.org/10.1016/j.ymssp.2019.06.025 0888-3270 0000-0003-1007-0689 0000-0002-0228-1796 https://hdl.handle.net/10356/149990 10.1016/j.ymssp.2019.06.025 2-s2.0-85067801720 132 194 210 en Mechanical Systems and Signal Processing © 2019 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 Ambient Data Asynchronous Data Zhu, Yi-Chen Au, Siu-Kui Bayesian modal identification method based on general coherence model for asynchronous ambient data |
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A Bayesian frequency domain method for modal identification using asynchronous ambient data has been proposed previously. It provides a flexible and economical way to conduct ambient vibration tests as time synchronisation among data channels is not required. To simplify computation, zero coherence among synchronous data groups is assumed in the method, which inevitably introduces modelling error and lacks the ability of quantifying the synchronisation degree among different groups. To address these issues, a Bayesian modal identification method with a general coherence assumption among synchronisation groups is proposed in this paper. Computational difficulties are addressed and an efficient algorithm for determining the most probable values of modal properties is proposed. Synthetic and laboratory data examples are presented to validate the proposed method. It is also applied to modal identification of a full-scale ambient test, which illustrates the feasibility of the proposed method to real asynchronous data under field test configurations. For the cases investigated the proposed method does not lead to significant improvement in the identification accuracy of modal parameters compared to the method with zero coherence assumption. This is consistent with previous experience regarding the robustness of the zero coherence assumption and is now verified in this work. One may use the latter in practice for computational efficiency if the synchronisation degree among different groups is not demanded. |
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School of Civil and Environmental Engineering |
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School of Civil and Environmental Engineering Zhu, Yi-Chen Au, Siu-Kui |
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Article |
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Zhu, Yi-Chen Au, Siu-Kui |
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Zhu, Yi-Chen |
title |
Bayesian modal identification method based on general coherence model for asynchronous ambient data |
title_short |
Bayesian modal identification method based on general coherence model for asynchronous ambient data |
title_full |
Bayesian modal identification method based on general coherence model for asynchronous ambient data |
title_fullStr |
Bayesian modal identification method based on general coherence model for asynchronous ambient data |
title_full_unstemmed |
Bayesian modal identification method based on general coherence model for asynchronous ambient data |
title_sort |
bayesian modal identification method based on general coherence model for asynchronous ambient data |
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2021 |
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https://hdl.handle.net/10356/149990 |
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1701270517166637056 |