Conditioning deep learning on PDE parameters to generalise emulation of stochastic and chaotic dynamics

POSTER

Abstract

We introduce a probabilistic deep learning emulator for modeling stochastic and chaotic dynamical systems, conditioned on parameter values from the governing PDEs. Our approach involves pre-training on a fixed parameter domain and fine-tuning on a diverse, but crucially smaller dataset. This enables effective generalisation across a range of parameter values, maintaining robustness at interpolated values not seen during training. By incorporating local attention mechanisms, the network efficiently handles varying domain sizes, outperforming convolution kernels. This allows for computationally efficient pre-training on smaller domains, requiring limited data on larger domains to generalise to more turbulent regimes. We demonstrate our model's capabilities on quasi-geostrophic turbulence and the Kuramoto-Sivashinsky equation. The probabilistic nature of our model, along with significant computational speed-ups over traditional numerical integration, facilitates the efficient exploration of phase space and the statistical study of rare events.

*I.S. acknowledges funding by the UK Engineering and Physical Sciences Research Council (grant number EP/S022961/1) as part of the UKRI Centre for Doctoral Training in Application of Artificial Intelligence to the Study of Environmental Risks.

Presenters

  • Ira Jeet Singh Shokar

    • University of Cambridge

Authors

  • Ira Jeet Singh Shokar

    • University of Cambridge
  • Peter H Haynes

    • University of Cambridge
  • Rich R Kerswell

    • Univ of Cambridge