MLLGJan 23, 2025

EFiGP: Eigen-Fourier Physics-Informed Gaussian Process for Inference of Dynamic Systems

arXiv:2501.14107v1
Originality Incremental advance
AI Analysis

This addresses inverse problems in fields like biology, engineering, and physics, offering a method for reliable and interpretable modeling of complex dynamical systems, though it appears incremental as it builds on existing physics-informed Gaussian Process frameworks.

The paper tackled the problem of parameter estimation and trajectory reconstruction for noisy, sparse, and nonlinear dynamical systems governed by ODEs, proposing the EFiGP algorithm that integrates Fourier transformation and eigen-decomposition into a physics-informed Gaussian Process framework to eliminate numerical integration, enhancing computational efficiency and accuracy.

Parameter estimation and trajectory reconstruction for data-driven dynamical systems governed by ordinary differential equations (ODEs) are essential tasks in fields such as biology, engineering, and physics. These inverse problems -- estimating ODE parameters from observational data -- are particularly challenging when the data are noisy, sparse, and the dynamics are nonlinear. We propose the Eigen-Fourier Physics-Informed Gaussian Process (EFiGP), an algorithm that integrates Fourier transformation and eigen-decomposition into a physics-informed Gaussian Process framework. This approach eliminates the need for numerical integration, significantly enhancing computational efficiency and accuracy. Built on a principled Bayesian framework, EFiGP incorporates the ODE system through probabilistic conditioning, enforcing governing equations in the Fourier domain while truncating high-frequency terms to achieve denoising and computational savings. The use of eigen-decomposition further simplifies Gaussian Process covariance operations, enabling efficient recovery of trajectories and parameters even in dense-grid settings. We validate the practical effectiveness of EFiGP on three benchmark examples, demonstrating its potential for reliable and interpretable modeling of complex dynamical systems while addressing key challenges in trajectory recovery and computational cost.

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