Wavelet Diffusion Neural Operator
Simulating and controlling physical systems described by partial differential equations (PDEs) are crucial tasks across science and engineering. Recently, diffusion generative models have emerged as a competitive class of methods for these tasks due to their ability to capture long-term dependencies...
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Zusammenfassung: | Simulating and controlling physical systems described by partial differential
equations (PDEs) are crucial tasks across science and engineering. Recently,
diffusion generative models have emerged as a competitive class of methods for
these tasks due to their ability to capture long-term dependencies and model
high-dimensional states. However, diffusion models typically struggle with
handling system states with abrupt changes and generalizing to higher
resolutions. In this work, we propose Wavelet Diffusion Neural Operator (WDNO),
a novel PDE simulation and control framework that enhances the handling of
these complexities. WDNO comprises two key innovations. Firstly, WDNO performs
diffusion-based generative modeling in the wavelet domain for the entire
trajectory to handle abrupt changes and long-term dependencies effectively.
Secondly, to address the issue of poor generalization across different
resolutions, which is one of the fundamental tasks in modeling physical
systems, we introduce multi-resolution training. We validate WDNO on five
physical systems, including 1D advection equation, three challenging physical
systems with abrupt changes (1D Burgers' equation, 1D compressible
Navier-Stokes equation and 2D incompressible fluid), and a real-world dataset
ERA5, which demonstrates superior performance on both simulation and control
tasks over state-of-the-art methods, with significant improvements in long-term
and detail prediction accuracy. Remarkably, in the challenging context of the
2D high-dimensional and indirect control task aimed at reducing smoke leakage,
WDNO reduces the leakage by 33.2% compared to the second-best baseline. |
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DOI: | 10.48550/arxiv.2412.04833 |