Key points are not available for this paper at this time.
Abstract. We propose denoising diffusion models for data-driven representation learning of dynamical systems. In this type of generative deep learning, a neural network is trained to denoise and reverse a diffusion process, where Gaussian noise is added to states from the attractor of a dynamical system. Iteratively applied, the neural network can then map samples from isotropic Gaussian noise to the state distribution. We showcase the potential of such neural networks in proof-of-concept experiments with the Lorenz 1963 system. Trained for state generation, the neural network can produce samples that are almost indistinguishable from those on the attractor. The model has thereby learned an internal representation of the system, applicable for different tasks other than state generation. As a first task, we fine-tune the pre-trained neural network for surrogate modelling by retraining its last layer and keeping the remaining network as a fixed feature extractor. In these low-dimensional settings, such fine-tuned models perform similarly to deep neural networks trained from scratch. As a second task, we apply the pre-trained model to generate an ensemble out of a deterministic run. Diffusing the run, and then iteratively applying the neural network, conditions the state generation, which allows us to sample from the attractor in the run's neighbouring region. To control the resulting ensemble spread and Gaussianity, we tune the diffusion time and, thus, the sampled portion of the attractor. While easier to tune, this proposed ensemble sampler can outperform tuned static covariances in ensemble optimal interpolation. Therefore, these two applications show that denoising diffusion models are a promising way towards representation learning for dynamical systems.
Building similarity graph...
Analyzing shared references across papers
Loading...
Tobias Sebastian Finn
École nationale des ponts et chaussées
Lucas Disson
École nationale des ponts et chaussées
Alban Farchi
École nationale des ponts et chaussées
Nonlinear processes in geophysics
Building similarity graph...
Analyzing shared references across papers
Loading...
Finn et al. (Thu,) studied this question.
synapsesocial.com/papers/68e57fadb6db64358751d3b4 — DOI: https://doi.org/10.5194/npg-31-409-2024
Synapse has enriched 4 closely related papers on similar clinical questions. Consider them for comparative context: