Equation-Free Digital Twins for Nonlinear Structural Dynamics

arXiv:2605.0095081.0h-index: 32
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For engineers monitoring high-dimensional structures in extreme environments, this method offers a computationally efficient and resilient digital twin for real-time identification and virtual sensing under sensor failure or partial observability.

This paper introduces a rank-optimized digital twin framework using Koopman operator theory and Hankel-matrix embeddings for real-time state reconstruction of nonlinear structural dynamics under non-stationary and stochastic conditions. Validated on an NREL 5MW floating wind turbine, it achieves a coefficient of determination >0.95 at 1 Hz and accuracy >0.99 at higher sampling rates.

Monitoring high-dimensional engineering structures in extreme environments is limited by non-stationary excitation, nonlinear structural kinematics, and stochastic forcing. Traditional model-based and black-box data-driven methods often struggle to resolve these dynamics in real time, particularly under sensor failure or partial observability. This paper introduces a rank-optimized digital twin framework based on Koopman operator theory, Hankel-matrix embeddings, and dynamic mode decomposition. By lifting operational data into a linear invariant subspace, the method enables autonomous, input-blind reconstruction of structural states without requiring a priori mass or stiffness matrices. The framework is validated on an NREL 5MW spar-buoy floating offshore wind turbine, representing a challenging coupled aero-hydro-servo-elastic system. Results show that the rank-optimized Koopman-Hankel manifold separates structural resonances from deterministic 3P rotor harmonics under colored noise, where standard subspace identification can be unreliable. A rolling-horizon virtual sensing strategy achieves high-fidelity reconstruction at critical structural hotspots, with coefficient of determination greater than 0.95 at 1 Hz data assimilation and accuracy exceeding 0.99 at higher sampling rates. By estimating a physical Lyapunov time of approximately 1.0 s, the study defines the predictability horizon associated with the system information barrier. The proposed framework provides a computationally efficient and resilient digital twin approach for real-time identification and virtual sensing of complex structural dynamics.

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