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Robust Vibration Output-only Structural Health Monitoring Framework Based on Multi-modal Feature Fusion and Self-learning.

Authors :
Viet-Hung Dang
Truong-Thang Nguyen
Source :
Periodica Polytechnica: Civil Engineering. 2023, Vol. 67 Issue 2, p416-430. 15p.
Publication Year :
2023

Abstract

Output-only structural health monitoring is a highly active research direction because it is a promising methodology for building digital twin applications providing near-real-time monitoring results of the structure. However, one of the technical bottlenecks is how to work effectively with multiple high-dimensional vibration signals. To address this question, this study develops a two-stage data-driven framework based on various advanced techniques, such as time-series feature extractions, self-learning, graph neural network, and machine learning algorithms. At first, multiple features in statistical, time, and spectral domains, are extracted from raw vibration data; then, they subsequently enter a graph convolution network to account for the spatial correlation of sensor locations. After that, the high-performance adaptive boosting machine learning algorithm is leveraged to assess structures' health states. This method allows for learning a lower-dimensional yet informative representation of vibration data; thus, the subsequent monitoring tasks could be performed with reduced time complexity and economical computational resources. The performance of the proposed method is qualitatively and quantitatively demonstrated through two examples involving both numerical and experimental structural data. Furthermore, comparison and robustness studies are carried out, showing that the proposed approach outperforms various machine learning/deep learning-based methods in terms of accuracy and noise/missing-robustness. [ABSTRACT FROM AUTHOR]

Details

Language :
English
ISSN :
05536626
Volume :
67
Issue :
2
Database :
Academic Search Index
Journal :
Periodica Polytechnica: Civil Engineering
Publication Type :
Academic Journal
Accession number :
164891530
Full Text :
https://doi.org/10.3311/PPci.21756