Nature Communications (Oct 2024)

Generative learning for forecasting the dynamics of high-dimensional complex systems

  • Han Gao,
  • Sebastian Kaltenbach,
  • Petros Koumoutsakos

DOI
https://doi.org/10.1038/s41467-024-53165-w
Journal volume & issue
Vol. 15, no. 1
pp. 1 – 11

Abstract

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Abstract We introduce generative models for accelerating simulations of high-dimensional systems through learning and evolving their effective dynamics. In the proposed Generative Learning of Effective Dynamics (G-LED), instances of high dimensional data are down sampled to a lower dimensional manifold that is evolved through an auto-regressive attention mechanism. In turn, Bayesian diffusion models, that map this low-dimensional manifold onto its corresponding high-dimensional space, operate on batches of physics correlated, time sequences of data and capture the statistics of the system dynamics. We demonstrate the capabilities and drawbacks of G-LED in simulations of several benchmark systems, including the Kuramoto-Sivashinsky (KS) equation, two-dimensional high Reynolds number flow over a backward-facing step, and simulations of three-dimensional turbulent channel flow. The results demonstrate that generative learning offers new frontiers for the accurate forecasting of the statistical properties of high-dimensional systems at a reduced computational cost.