Efficient dynamic modal load reconstruction using physics-informed Gaussian processes based on frequency-sparse Fourier basis functions
Journal:
arXiv
Published Date:
Mar 12, 2025
Abstract
Knowledge of the force time history of a structure is essential to assess its
behaviour, ensure safety and maintain reliability. However, direct measurement
of external forces is often challenging due to sensor limitations, unknown
force characteristics, or inaccessible load points. This paper presents an
efficient dynamic load reconstruction method using physics-informed Gaussian
processes (GP) based on frequency-sparse Fourier basis functions. The GP's
covariance matrices are built using the description of the system dynamics, and
the model is trained using structural response measurements. This provides
support and interpretability to the machine learning model, in contrast to
purely data-driven methods. In addition, the model filters out irrelevant
components in the Fourier basis function by leveraging the sparsity of
structural responses in the frequency domain, thereby reducing computational
complexity during optimization. The trained model for structural responses is
then integrated with the differential equation for a harmonic oscillator,
creating a probabilistic dynamic load model that predicts load patterns without
requiring force data during training. The model's effectiveness is validated
through two case studies: a numerical model of a wind-excited 76-story building
and an experiment using a physical scale model of the Lilleb{\ae}lt Bridge in
Denmark, excited by a servo motor. For both cases, validation of the
reconstructed forces is provided using comparison metrics for several signal
properties. The developed model holds potential for applications in structural
health monitoring, damage prognosis, and load model validation.