Experimental Modal Analysis for engineering structures via time-delay Dynamic Mode Decomposition with Control
Yanxin Si (1), Bayu Jayawardhana (1), J. Nathan Kutz (3), Yunpeng Zhu (2), Liangliang Cheng (1) ((1) ENTEG, Faculty of Science, Engineering, University of Groningen, Groningen, The Netherlands, (2) School of Engineering, Materials Science, Queen Mary University of London, London

TL;DR
This paper introduces a high-dimensional experimental modal analysis method using time-delay Dynamic Mode Decomposition with control (DMDc), which improves robustness and computational efficiency over traditional methods like pLSCF, especially for complex structures.
Contribution
It establishes a physics-based connection between pLSCF and DMDc, and demonstrates the effectiveness of DMDc for high-dimensional modal analysis through simulations and experiments.
Findings
DMDc accurately identifies modal parameters in high-dimensional data.
DMDc outperforms pLSCF in noisy and high-dimensional scenarios.
Experimental results confirm robustness and reliability of DMDc for structural analysis.
Abstract
Experimental Modal Analysis (EMA) has been widely used to identify structural dynamic properties, including natural frequencies, damping ratios, and mode shapes, for structural integrity assessment. The Poly-reference Least Squares Complex Frequency (pLSCF) method is one of the most widely adopted approaches for EMA because of its strong ability to separate closely spaced modes and its robustness to measurement noise. However, pLSCF-based EMA is generally limited to low-dimensional cases with a small number of measurement points, as its computational cost increases rapidly for high-dimensional or continuous structural measurements, particularly with increasing model order. To overcome this limitation, this paper develops a high-dimensional EMA framework based on Dynamic Mode Decomposition with control (DMDc), a powerful data-driven technique originally developed in fluid dynamics, for…
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Taxonomy
TopicsStructural Health Monitoring Techniques · Bladed Disk Vibration Dynamics · Model Reduction and Neural Networks
