LGMLApr 19, 2025

Generative emulation of chaotic dynamics with coherent prior

arXiv:2504.14264v17 citationsh-index: 6Comput Method Appl Mech Eng
Originality Incremental advance
AI Analysis

This work addresses the problem of generating physically realistic simulations for chaotic systems, which is incremental as it builds on existing generative and reduced-order modeling techniques.

The paper tackles the challenge of data-driven emulation of chaotic dynamics by introducing Cohesion, a generative framework that uses coherent priors from reduced-order models to guide diffusion-based modeling, achieving superior long-range forecasting skill on systems like Kolmogorov flow and climate dynamics.

Data-driven emulation of nonlinear dynamics is challenging due to long-range skill decay that often produces physically unrealistic outputs. Recent advances in generative modeling aim to address these issues by providing uncertainty quantification and correction. However, the quality of generated simulation remains heavily dependent on the choice of conditioning priors. In this work, we present an efficient generative framework for dynamics emulation, unifying principles of turbulence with diffusion-based modeling: Cohesion. Specifically, our method estimates large-scale coherent structure of the underlying dynamics as guidance during the denoising process, where small-scale fluctuation in the flow is then resolved. These coherent priors are efficiently approximated using reduced-order models, such as deep Koopman operators, that allow for rapid generation of long prior sequences while maintaining stability over extended forecasting horizon. With this gain, we can reframe forecasting as trajectory planning, a common task in reinforcement learning, where conditional denoising is performed once over entire sequences, minimizing the computational cost of autoregressive-based generative methods. Empirical evaluations on chaotic systems of increasing complexity, including Kolmogorov flow, shallow water equations, and subseasonal-to-seasonal climate dynamics, demonstrate Cohesion superior long-range forecasting skill that can efficiently generate physically-consistent simulations, even in the presence of partially-observed guidance.

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