Conditional neural field latent diffusion model for generating spatiotemporal turbulence

IF 14.7 1区 综合性期刊 Q1 MULTIDISCIPLINARY SCIENCES
Pan Du, Meet Hemant Parikh, Xiantao Fan, Xin-Yang Liu, Jian-Xun Wang
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Abstract

Eddy-resolving turbulence simulations are essential for understanding and controlling complex unsteady fluid dynamics, with significant implications for engineering and scientific applications. Traditional numerical methods, such as direct numerical simulations (DNS) and large eddy simulations (LES), provide high accuracy but face severe computational limitations, restricting their use in high-Reynolds number or real-time scenarios. Recent advances in deep learning-based surrogate models offer a promising alternative by providing efficient, data-driven approximations. However, these models often rely on deterministic frameworks, which struggle to capture the chaotic and stochastic nature of turbulence, especially under varying physical conditions and complex, irregular geometries. Here, we introduce the Conditional Neural Field Latent Diffusion (CoNFiLD) model, a generative learning framework for efficient high-fidelity stochastic generation of spatiotemporal turbulent flows in complex, three-dimensional domains. CoNFiLD synergistically integrates conditional neural field encoding with latent diffusion processes, enabling memory-efficient and robust generation of turbulence under diverse conditions. Leveraging Bayesian conditional sampling, CoNFiLD flexibly adapts to various turbulence generation scenarios without retraining. This capability supports applications such as zero-shot full-field flow reconstruction from sparse sensor data, super-resolution generation, and spatiotemporal data restoration. Extensive numerical experiments demonstrate CoNFiLD’s capability to accurately generate inhomogeneous, anisotropic turbulent flows within complex domains. These findings underscore CoNFiLD’s potential as a versatile, computationally efficient tool for real-time unsteady turbulence simulation, paving the way for advancements in digital twin technology for fluid dynamics. By enabling rapid, adaptive high-fidelity simulations, CoNFiLD can bridge the gap between physical and virtual systems, allowing real-time monitoring, predictive analysis, and optimization of complex fluid processes.

Abstract Image

产生时空湍流的条件神经场潜在扩散模型
涡流解析湍流模拟对于理解和控制复杂的非定常流体动力学是必不可少的,具有重要的工程和科学应用意义。传统的数值模拟方法,如直接数值模拟(DNS)和大涡模拟(LES),具有较高的精度,但面临严重的计算限制,限制了它们在高雷诺数或实时场景中的应用。基于深度学习的代理模型的最新进展通过提供有效的、数据驱动的近似,提供了一个有前途的替代方案。然而,这些模型通常依赖于确定性框架,难以捕捉湍流的混沌和随机性质,特别是在不同的物理条件和复杂的不规则几何形状下。在这里,我们介绍了条件神经场潜在扩散(confield)模型,这是一个生成式学习框架,用于在复杂的三维域中高效高保真地随机生成时空湍流。confield将条件神经场编码与潜在扩散过程协同集成,在不同条件下实现高效记忆和稳健的湍流生成。利用贝叶斯条件采样,confield灵活地适应各种湍流产生场景,而无需重新训练。该功能支持基于稀疏传感器数据的零射击全场流重建、超分辨率生成和时空数据恢复等应用。广泛的数值实验证明confield的能力,以准确地产生非均匀,各向异性紊流在复杂的领域。这些发现强调了confield作为一种多功能、计算效率高的实时非定常湍流模拟工具的潜力,为流体动力学数字孪生技术的进步铺平了道路。通过实现快速、自适应的高保真仿真,confield可以弥合物理系统和虚拟系统之间的差距,实现对复杂流体过程的实时监测、预测分析和优化。
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来源期刊
Nature Communications
Nature Communications Biological Science Disciplines-
CiteScore
24.90
自引率
2.40%
发文量
6928
审稿时长
3.7 months
期刊介绍: Nature Communications, an open-access journal, publishes high-quality research spanning all areas of the natural sciences. Papers featured in the journal showcase significant advances relevant to specialists in each respective field. With a 2-year impact factor of 16.6 (2022) and a median time of 8 days from submission to the first editorial decision, Nature Communications is committed to rapid dissemination of research findings. As a multidisciplinary journal, it welcomes contributions from biological, health, physical, chemical, Earth, social, mathematical, applied, and engineering sciences, aiming to highlight important breakthroughs within each domain.
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