Gibbs Phenomenon Suppression in PDE-Based Statistical Spatio-Temporal Models
Guanzhou Wei, Xiao Liu, Russell Barton

TL;DR
This paper introduces a physics-informed spatio-temporal modeling method that uses a data flipping technique to suppress the Gibbs phenomenon caused by boundary discontinuities in Fourier series approximations.
Contribution
The novel approach involves flipping the process data to create a periodic waveform, enabling effective Gibbs suppression while preserving physical PDE-based dynamics.
Findings
Significantly reduces ripple artifacts in models
Effectively suppresses Gibbs phenomenon in real datasets
Maintains physical interpretability of spectral coefficients
Abstract
A class of physics-informed spatio-temporal models has recently been proposed for modeling spatio-temporal processes governed by advection-diffusion equations. The central idea is to approximate the process by a truncated Fourier series and let the governing physics determine the dynamics of the spectral coefficients. However, because many spatio-temporal processes in real applications are non-periodic with boundary discontinuities, the well-known Gibbs phenomenon and ripple artifact almost always exist in the outputs generated by such models due to truncation of the Fourier series. Hence, the key contribution of this paper is to propose a physics-informed spatio-temporal modeling approach that significantly suppresses the Gibbs phenomenon when modeling spatio-temporal advection-diffusion processes. The proposed approach starts with a data flipping procedure for the process respectively…
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Taxonomy
TopicsMeteorological Phenomena and Simulations · Plant Water Relations and Carbon Dynamics · Hydrological Forecasting Using AI
