Bayesian conditional diffusion models for versatile spatiotemporal turbulence generation

被引:0
|
作者
Gao, Han [1 ,3 ]
Han, Xu [3 ]
Fan, Xiantao [1 ]
Sun, Luning [1 ]
Liu, Li -Ping [4 ]
Duan, Lian [5 ,6 ]
Wang, Jian-Xun [1 ,2 ]
机构
[1] Univ Notre Dame, Aerosp & Mech Engn Dept, Notre Dame, IN 46556 USA
[2] Univ Notre Dame, Lucy Family Inst Data & Soc, Notre Dame, IN USA
[3] Harvard Univ, Sch Engn & Appl Sci, Cambridge, MA USA
[4] Tufts Univ, Dept Comp Sci, Medford, MA USA
[5] Lawrence Livermore Natl Lab, Livermore, CA USA
[6] Ohio State Univ, Dept Mech & Aerosp Engn, Columbus, OH USA
基金
美国国家科学基金会;
关键词
Turbulent flow; Generative modeling; Bayesian statistics; Surrogate modeling; Wall-bounded turbulence; Chaotic dynamics; DIRECT NUMERICAL-SIMULATION; CHANNEL FLOW; SUPERRESOLUTION;
D O I
10.1016/j.cma.2024.117023
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Turbulent flows, characterized by their chaotic and stochastic nature, have historically presented formidable challenges to predictive computational modeling. Traditional eddy -resolved numerical simulations often require vast computational resources, making them impractical or infeasible for numerous engineering applications. As an alternative, deep learning -based surrogate models have emerged, offering data -drive solutions. However, these are typically constructed within deterministic settings, leading to shortfall in capturing the innate chaotic and stochastic behaviors of turbulent dynamics. In this study, we introduce a novel generative framework grounded in probabilistic diffusion models for versatile generation of spatiotemporal turbulence under various conditions. Our method unifies both unconditional and conditional sampling strategies within a Bayesian framework, which can accommodate diverse conditioning scenarios, including those with a direct differentiable link between specified conditions and generated unsteady flow outcomes, as well as scenarios lacking such explicit correlations. A notable feature of our approach is the method proposed for long -span flow sequence generation, which is based on autoregressive gradient -based conditional sampling, eliminating the need for cumbersome retraining processes. We evaluate and showcase the versatile turbulence generation capability of our framework through a suite of numerical experiments, including: (1) the synthesis of Large Eddy Simulations (LES) simulated instantaneous flow sequences from unsteady Reynolds -Averaged Navier-Stokes (URANS) inputs; (2) holistic generation of inhomogeneous, anisotropic wall -bounded turbulence, whether from given initial conditions, prescribed turbulence statistics, or entirely from scratch; (3) super -resolved generation of high-speed turbulent boundary layer flows from low -resolution data across a range of input resolutions. Collectively, our numerical experiments highlight the merit and transformative potential of the proposed methods, making a significant advance in the field of turbulence generation.
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页数:31
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