TY - JOUR
T1 - Towards high-precision data modeling of SHM measurements using an improved sparse Bayesian learning scheme with strong generalization ability
AU - Wang, Qi Ang
AU - Dai, Yang
AU - Ma, Zhan Guo
AU - Wang, Jun Fang
AU - Lin, Jian Fu
AU - Ni, Yi Qing
AU - Ren, Wei Xin
AU - Jiang, Jiang
AU - Yang, Xuan
AU - Yan, Jiaru
N1 - Funding Information:
The author(s) disclosed receipt of the following financial support for the research, authorship, and/or publication of this article: The authors wish to acknowledge the supports from the National Key R&D Program of China (Grant Nos. 2019YFB2102702 and 2019YFE0118500), China Postdoctoral Science Foundation (2019M652006), National Natural Science Foundation of China (Grant Nos. 52078478, 51708545, and 52008258), Shenzhen Science and Technology Program (Grant No. KQTD20180412181337494), and Shenzhen Key Laboratory of Structure Safety and Health Monitoring of Marine Infrastructures (In preparation, Grant No. ZDSYS2020 1020162400001).
Publisher Copyright:
© The Author(s) 2023.
PY - 2023
Y1 - 2023
N2 - Central to structural health monitoring (SHM) is data modeling, manipulation, and interpretation on the basis of a sophisticated SHM system. Despite continuous evolution of SHM technology, the precise modeling and forecasting of SHM measurements under various uncertainties to extract structural condition-relevant knowledge remains a challenge. Aiming to resolve this problem, a novel application of a fully probabilistic and high-precision data modeling method was proposed in the context of an improved Sparse Bayesian Learning (iSBL) scheme. The proposed iSBL data modeling framework features the following merits. It can remove the need to specify the number of terms in the data-fitting function, and automatize sparsity of the Bayesian model based on the features of SHM monitoring data, which will enhance the generalization ability and then improve the data prediction accuracy. Embedded in a Bayesian framework which exhibits built-in protection against over-fitting problems, the proposed iSBL scheme has high robustness to data noise, especially for data forecasting. The model is verified to be effective on SHM vibration field monitoring data collected from a real-world large-scale cable-stayed bridge. The recorded acceleration data with two different vibration patterns, that is, stationary ambient vibration data and non-stationary decay vibration data, are investigated, returning accurate probabilistic predictions in both the time and frequency domains.
AB - Central to structural health monitoring (SHM) is data modeling, manipulation, and interpretation on the basis of a sophisticated SHM system. Despite continuous evolution of SHM technology, the precise modeling and forecasting of SHM measurements under various uncertainties to extract structural condition-relevant knowledge remains a challenge. Aiming to resolve this problem, a novel application of a fully probabilistic and high-precision data modeling method was proposed in the context of an improved Sparse Bayesian Learning (iSBL) scheme. The proposed iSBL data modeling framework features the following merits. It can remove the need to specify the number of terms in the data-fitting function, and automatize sparsity of the Bayesian model based on the features of SHM monitoring data, which will enhance the generalization ability and then improve the data prediction accuracy. Embedded in a Bayesian framework which exhibits built-in protection against over-fitting problems, the proposed iSBL scheme has high robustness to data noise, especially for data forecasting. The model is verified to be effective on SHM vibration field monitoring data collected from a real-world large-scale cable-stayed bridge. The recorded acceleration data with two different vibration patterns, that is, stationary ambient vibration data and non-stationary decay vibration data, are investigated, returning accurate probabilistic predictions in both the time and frequency domains.
KW - an improved sparse Bayesian learning
KW - data modeling
KW - generalization ability
KW - regression and forecasting
KW - SHM
UR - http://www.scopus.com/inward/record.url?scp=85163035087&partnerID=8YFLogxK
U2 - 10.1177/14759217231170316
DO - 10.1177/14759217231170316
M3 - Journal article
AN - SCOPUS:85163035087
SN - 1475-9217
JO - Structural Health Monitoring
JF - Structural Health Monitoring
ER -