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This study introduces a data-driven discrepancy modeling method that integrates sensor data into physics-based models. The approach effectively recovers system energy and fundamental frequencies, even with limited data and model inaccuracies.

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Area of Science:

  • Computational Mechanics
  • Data-Driven Modeling
  • Scientific Computing

Background:

  • Physics-based models often struggle to incorporate real-world sensor data effectively.
  • Discrepancies between theoretical models and experimental measurements are common in dynamical systems.
  • Integrating measured data can improve model accuracy and predictive power.

Purpose of the Study:

  • To present a novel data-driven discrepancy modeling (DDV) method.
  • To demonstrate the variational embedding of measured data into a physics-based framework.
  • To investigate the impact of data assimilation on the accuracy of dynamical system simulations.

Main Methods:

  • Developed a data-driven discrepancy modeling method that variationally embeds measured data.
  • Augmented physics-based models with a loss function derived from the residual between theory and measurements.
  • Applied the method to linear elastodynamics, incorporating high-fidelity data from a subset of the domain.

Main Results:

  • The DDV method successfully incorporated high-fidelity data into forward simulations.
  • Analysis showed the method recovers the energy and fundamental frequency band of the target system.
  • Strain and kinetic energy time histories were accurately recovered for a cantilever beam, even with an undamped model.

Conclusions:

  • The data-driven discrepancy modeling method effectively integrates sparse measurement data.
  • The approach enhances the accuracy of physics-based models by accounting for model discrepancies.
  • This method offers a robust framework for analyzing dynamical systems with embedded sensor data.