Forecasting Turbulent Modes with Nonparametric Diffusion Models: Learning from noisy data
Tyrus Berry, John Harlim

TL;DR
This paper introduces a nonparametric diffusion forecast method using delay-embedding to predict turbulent modes from noisy partial observations, demonstrating competitive performance against traditional models.
Contribution
The paper develops a delay-embedding based diffusion forecast approach that effectively handles noisy, partial data for turbulent dynamical systems, advancing nonparametric modeling techniques.
Findings
Diffusion forecast accurately predicts turbulent modes from noisy data.
Delay embedding reduces noise influence and stabilizes dynamics extraction.
Method performs competitively with perfect models in turbulent regimes.
Abstract
In this paper, we apply a recently developed nonparametric modeling approach, the "diffusion forecast", to predict the time-evolution of Fourier modes of turbulent dynamical systems. While the diffusion forecasting method assumes the availability of a noise-free training data set observing the full state space of the dynamics, in real applications we often have only partial observations which are corrupted by noise. To alleviate these practical issues, following the theory of embedology, the diffusion model is built using the delay-embedding coordinates of the data. We show that this delay embedding biases the geometry of the data in a way which extracts the most stable component of the dynamics and reduces the influence of independent additive observation noise. The resulting diffusion forecast model approximates the semigroup solutions of the generator of the underlying dynamics in…
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