Integrating Neural Operators with Diffusion Models Improves Spectral Representation in Turbulence Modeling
- URL: http://arxiv.org/abs/2409.08477v1
- Date: Fri, 13 Sep 2024 02:07:20 GMT
- Title: Integrating Neural Operators with Diffusion Models Improves Spectral Representation in Turbulence Modeling
- Authors: Vivek Oommen, Aniruddha Bora, Zhen Zhang, George Em Karniadakis,
- Abstract summary: We integrate neural operators with diffusion models to address the spectral limitations of neural operators in surrogate modeling of turbulent flows.
Our approach is validated for different neural operators on diverse datasets.
This work establishes a new paradigm for combining generative models with neural operators to advance surrogate modeling of turbulent systems.
- Score: 3.9134883314626876
- License: http://creativecommons.org/licenses/by-nc-sa/4.0/
- Abstract: We integrate neural operators with diffusion models to address the spectral limitations of neural operators in surrogate modeling of turbulent flows. While neural operators offer computational efficiency, they exhibit deficiencies in capturing high-frequency flow dynamics, resulting in overly smooth approximations. To overcome this, we condition diffusion models on neural operators to enhance the resolution of turbulent structures. Our approach is validated for different neural operators on diverse datasets, including a high Reynolds number jet flow simulation and experimental Schlieren velocimetry. The proposed method significantly improves the alignment of predicted energy spectra with true distributions compared to neural operators alone. Additionally, proper orthogonal decomposition analysis demonstrates enhanced spectral fidelity in space-time. This work establishes a new paradigm for combining generative models with neural operators to advance surrogate modeling of turbulent systems, and it can be used in other scientific applications that involve microstructure and high-frequency content. See our project page: vivekoommen.github.io/NO_DM
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