Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix

Bayesian operational modal analysis (BAYOMA) has been increasingly applied to ambient vibration tests, providing a fundamental means for estimating modal properties as well as quantifying their identification uncertainty consistent with probability rules and modelling assumptions. Computing the most...

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Main Authors: Zhu, Zuo, Au, Siu-Kui, Li, Binbin
Other Authors: School of Civil and Environmental Engineering
Format: Article
Language:English
Published: 2023
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Online Access:https://hdl.handle.net/10356/170417
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Institution: Nanyang Technological University
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spelling sg-ntu-dr.10356-1704172023-09-12T01:12:17Z Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix Zhu, Zuo Au, Siu-Kui Li, Binbin School of Civil and Environmental Engineering Engineering::Civil engineering Operational Modal Analysis Close Modes Bayesian operational modal analysis (BAYOMA) has been increasingly applied to ambient vibration tests, providing a fundamental means for estimating modal properties as well as quantifying their identification uncertainty consistent with probability rules and modelling assumptions. Computing the most probable value of modal parameters in BAYOMA involves a high-dimensional numerical optimisation of the negative log-likelihood function (NLLF). Brute-force optimisation using generic algorithms treating the NLLF as a black box is computationally prohibitive and often non-converging. Efficient iterative algorithms have been developed over the past decade, but challenges still exist, e.g., for very close modes that may require significantly more iterations or (in some cases) may not be converging. Leveraging on recent advance in the mathematics and understanding of the Fisher Information Matrix (FIM) of modal parameters, an efficient method based on Newton-type iterations is proposed in this work to improve computational efficiency and convergence robustness. The MPV estimate in each iteration is updated based on two characteristic types of principal directions of the FIM. Move of the first type involves mode shapes only and is orthogonal to the subspace spanned by the current mode shape estimates. The second type involves updates of all modal parameters, where the mode shapes move within the subspace. Compact analytical expressions are derived for the gradient of NLLF to ensure accurate and efficient use in determining each iteration move. The performance of the proposed method is investigated with a comprehensive study based on synthetic, laboratory and field data. Results reveal that the proposed algorithm generally outperforms existing ones in terms of computational time by an order of magnitude, and it has better convergence robustness especially for challenging cases with very close modes and high modal force coherence. Nanyang Technological University The first and second authors are supported by grant SUG/4 (04INS000618C120) from the Nanyang Technological University, Singapore. The third author is supported by the National Natural Science Foundation of China (51908494) and Fundamental Research Funds for the Central Universities (2021XZZX040) . Early exploration of this work was supported by the UK Engineering & Physical Sciences Research Council (EP/N017897/1). 2023-09-12T01:12:17Z 2023-09-12T01:12:17Z 2023 Journal Article Zhu, Z., Au, S. & Li, B. (2023). Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix. Mechanical Systems and Signal Processing, 186, 109894-. https://dx.doi.org/10.1016/j.ymssp.2022.109894 0888-3270 https://hdl.handle.net/10356/170417 10.1016/j.ymssp.2022.109894 2-s2.0-85141337581 186 109894 en 04INS000618C120 Mechanical Systems and Signal Processing © 2022 Elsevier Ltd. All rights reserved.
institution Nanyang Technological University
building NTU Library
continent Asia
country Singapore
Singapore
content_provider NTU Library
collection DR-NTU
language English
topic Engineering::Civil engineering
Operational Modal Analysis
Close Modes
spellingShingle Engineering::Civil engineering
Operational Modal Analysis
Close Modes
Zhu, Zuo
Au, Siu-Kui
Li, Binbin
Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix
description Bayesian operational modal analysis (BAYOMA) has been increasingly applied to ambient vibration tests, providing a fundamental means for estimating modal properties as well as quantifying their identification uncertainty consistent with probability rules and modelling assumptions. Computing the most probable value of modal parameters in BAYOMA involves a high-dimensional numerical optimisation of the negative log-likelihood function (NLLF). Brute-force optimisation using generic algorithms treating the NLLF as a black box is computationally prohibitive and often non-converging. Efficient iterative algorithms have been developed over the past decade, but challenges still exist, e.g., for very close modes that may require significantly more iterations or (in some cases) may not be converging. Leveraging on recent advance in the mathematics and understanding of the Fisher Information Matrix (FIM) of modal parameters, an efficient method based on Newton-type iterations is proposed in this work to improve computational efficiency and convergence robustness. The MPV estimate in each iteration is updated based on two characteristic types of principal directions of the FIM. Move of the first type involves mode shapes only and is orthogonal to the subspace spanned by the current mode shape estimates. The second type involves updates of all modal parameters, where the mode shapes move within the subspace. Compact analytical expressions are derived for the gradient of NLLF to ensure accurate and efficient use in determining each iteration move. The performance of the proposed method is investigated with a comprehensive study based on synthetic, laboratory and field data. Results reveal that the proposed algorithm generally outperforms existing ones in terms of computational time by an order of magnitude, and it has better convergence robustness especially for challenging cases with very close modes and high modal force coherence.
author2 School of Civil and Environmental Engineering
author_facet School of Civil and Environmental Engineering
Zhu, Zuo
Au, Siu-Kui
Li, Binbin
format Article
author Zhu, Zuo
Au, Siu-Kui
Li, Binbin
author_sort Zhu, Zuo
title Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix
title_short Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix
title_full Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix
title_fullStr Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix
title_full_unstemmed Accelerating convergence in Bayesian operational modal analysis with Fisher information matrix
title_sort accelerating convergence in bayesian operational modal analysis with fisher information matrix
publishDate 2023
url https://hdl.handle.net/10356/170417
_version_ 1779156302364147712