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  3. Data-driven physics-guided metamodels in structural dynamics: comparative assessment
 
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Data-driven physics-guided metamodels in structural dynamics: comparative assessment

Journal
e-Journal of Nondestructive Testing
ISSN
1435-4934
Date Issued
2026-02
Author(s)
Matias Cambara
Departamento de Obras Civiles  
Gaston Fermandois  
Departamento de Obras Civiles  
DOI
10.58286/32450
Abstract
This study presents a benchmark of two physics-guided neural surrogates – PhyCNN and multi–LSTM – across three single-degree-of-freedom system scenarios of increasing nonlinearity: (I) a Duffing oscillator; (II) a hysteretic Bouc–Wen system under band-limited noise; and (III) a hysteretic Bouc–Wen isolator representative of base-isolated buildings subjected to long duration Chilean earthquakes. Physics-guided LSTMs achieve the lowest errors in displacement and velocity and better reproduce hysteretic geometry; CNNs yield tighter, more stable errors when the normalized internal force is predicted directly. Reconstructing force from LSTM velocity closes much of the gap but remains fragile in long, strongly nonlinear records due to residual-drift accumulation. Simple training discipline—input/target normalization, validation-driven early stopping and scheduling, and light force regularization—substantially improves robustness.
Subjects

Hysteresis

Deep learning

Seismic response

Physics-informed neur...

Nonlinear dynamics

Residual drift

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