Analysis of Structural Health Monitoring Data with Correlated Measurement Error by Bayesian System Identification: Theory and Application.

He-Qing Mu, Xin-Xiong Liang, Ji-Hui Shen, Feng-Liang Zhang
Author Information
  1. He-Qing Mu: Key Laboratory of Earthquake Engineering and Engineering Vibration, Institute of Engineering Mechanics, China Earthquake Administration, Harbin 150080, China. ORCID
  2. Xin-Xiong Liang: School of Civil Engineering and Transportation, State Key Laboratory of Subtropical Building Science, Guangzhou 510640, China.
  3. Ji-Hui Shen: School of Civil Engineering and Transportation, State Key Laboratory of Subtropical Building Science, Guangzhou 510640, China.
  4. Feng-Liang Zhang: School of Civil and Environmental Engineering, Harbin Institute of Technology, Shenzhen 518055, China.

Abstract

Measurement error is non-negligible and crucial in SHM data analysis. In many applications of SHM, measurement errors are statistically correlated in space and/or in time for data from sensor networks. Existing works solely consider spatial correlation for measurement error. When both spatial and temporal correlation are considered simultaneously, the existing works collapse, as they do not possess a suitable form describing spatially and temporally correlated measurement error. In order to tackle this burden, this paper generalizes the form of correlated measurement error from spatial correlation only or temporal correlation only to spatial-temporal correlation. A new form of spatial-temporal correlation and the corresponding likelihood function are proposed, and multiple candidate model classes for the measurement error are constructed, including no correlation, spatial correlation, temporal correlation, and the proposed spatial-temporal correlation. Bayesian system identification is conducted to achieve not only the posterior probability density function (PDF) for the model parameters, but also the posterior probability of each candidate model class for selecting the most suitable/plausible model class for the measurement error. Examples are presented with applications to model updating and modal frequency prediction under varying environmental conditions, ensuring the necessity of considering correlated measurement error and the capability of the proposed Bayesian system identification in the uncertainty quantification at the parameter and model levels.

Keywords

References

  1. Sensors (Basel). 2020 Jan 29;20(3): [PMID: 32013073]
  2. Sensors (Basel). 2020 May 13;20(10): [PMID: 32414205]

Grants

  1. 2019EEEVL0401/Scientific Research Fund of Institute of Engineering Mechanics, China Earthquake Administration
  2. 2021B1212040003/Guangdong Provincial Key Laboratory of Modern Civil Engineering Technology
  3. 20212B01/Guangdong Provincial Key Laboratory of Modern Civil Engineering Technology
  4. 52278298/National Natural Science Foundation of China
  5. JCYJ20190806143618723/Natural Science Foundation of Shenzhen

MeSH Term

Bayes Theorem

Word Cloud

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