高雷诺数湍流的晶格玻尔兹曼模拟的物理数据驱动近壁建模

IF 5.4 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY
Xiao Xue, Shuo Wang, Hua-Dong Yao, Lars Davidson, Peter V. Coveney
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引用次数: 0

摘要

数据驱动方法为提高湍流模拟性能提供了新的机遇,而湍流模拟对于从风电场、空气动力学设计到天气和气候预报等广泛应用至关重要。然而,目前的模拟方法往往需要大量数据和计算资源。虽然数据驱动方法已被广泛应用于连续纳维-斯托克斯方程,但将这些方法与高度可扩展的格子玻尔兹曼方法相结合的工作还很有限。在此,我们提出了一种物理信息神经网络框架,用于改进基于格子玻尔兹曼法的近壁湍流模拟。利用少量数据并结合物理约束条件,我们的模型可以准确预测摩擦雷诺数(最高可达 1.0 × 106)范围内的流动行为。与其他使用直接数值模拟数据集的模型不同,这种方法将数据要求降低了三个数量级,并允许稀疏网格配置。我们的工作拓宽了格子玻尔兹曼的应用范围,使在不同环境下对湍流进行高效的大规模模拟成为可能。作者利用 IDDES 数据为晶格玻尔兹曼方法提供了一个数据驱动的近壁建模框架。他们的模型可以预测摩擦雷诺数高达 1,000,000 的流动,并能有效处理稀疏的近壁网格。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

Physics informed data-driven near-wall modelling for lattice Boltzmann simulation of high Reynolds number turbulent flows

Physics informed data-driven near-wall modelling for lattice Boltzmann simulation of high Reynolds number turbulent flows
Data-driven approaches offer novel opportunities for improving the performance of turbulent flow simulations, which are critical to wide-ranging applications from wind farms and aerodynamic designs to weather and climate forecasting. However, current methods for these simulations often require large amounts of data and computational resources. While data-driven methods have been extensively applied to the continuum Navier-Stokes equations, limited work has been done to integrate these methods with the highly scalable lattice Boltzmann method. Here, we present a physics-informed neural network framework for improving lattice Boltzmann-based simulations of near-wall turbulent flow. Using a small amount of data and integrating physical constraints, our model accurately predicts flow behaviour at a wide range of friction Reynolds numbers up to 1.0 × 106. In contradistinction with other models that use direct numerical simulation datasets, this approach reduces data requirements by three orders of magnitude and allows for sparse grid configurations. Our work broadens the scope of lattice Boltzmann applications, enabling efficient large-scale simulations of turbulent flow in diverse contexts. The authors provide a data-driven near-wall modelling framework for the lattice Boltzmann method using IDDES data. Their model can predict flows with friction Reynolds numbers up to 1,000,000 and effectively handle sparse near-wall grids.
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来源期刊
Communications Physics
Communications Physics Physics and Astronomy-General Physics and Astronomy
CiteScore
8.40
自引率
3.60%
发文量
276
审稿时长
13 weeks
期刊介绍: Communications Physics is an open access journal from Nature Research publishing high-quality research, reviews and commentary in all areas of the physical sciences. Research papers published by the journal represent significant advances bringing new insight to a specialized area of research in physics. We also aim to provide a community forum for issues of importance to all physicists, regardless of sub-discipline. The scope of the journal covers all areas of experimental, applied, fundamental, and interdisciplinary physical sciences. Primary research published in Communications Physics includes novel experimental results, new techniques or computational methods that may influence the work of others in the sub-discipline. We also consider submissions from adjacent research fields where the central advance of the study is of interest to physicists, for example material sciences, physical chemistry and technologies.
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