基于直接计算流体力学数据库的数据驱动型湍流场预测机器学习方法

IF 1.1 4区 工程技术 Q4 MECHANICS Journal of Applied Fluid Mechanics Pub Date : 2024-01-01 DOI:10.47176/jafm.17.1.2109
M. Nemati, †. A.Jahangirian
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引用次数: 0

摘要

本文介绍了一种利用基于神经网络的数据驱动法预测可压缩湍流场的新方法。湍流区域的精确预测在很大程度上依赖于可用数据的分辨率。传统方法采用基于图像的技术,将分散的计算流体动力学(CFD)数据映射到笛卡尔网格上,但在边界层和尾流等关键区域会遇到数据稀缺的问题。最近,卷积神经网络(CNN)利用流场图像作为流场预测的数据集,已成为流体动力学领域最广泛引用的技术。然而,CNN 需要高像素密度的数据集来提高关键区域的训练精度,从而增加了输入数据量和机器训练时间。为了应对这一挑战,我们提出的方法不使用流场图像,而是直接根据 CFD 网格点的流场属性生成数据集。采用这种方法有几个优点。首先,该网络受益于非结构化网格的有利特性,如物体表面附近和远场的不同点间距,这有效减少了输入数据量,从而降低了机器训练成本。其次,训练数据集的构建无需进行内插或外推,从而保持了 CFD 数据的准确性。在这种情况下,可以使用建议的数据集训练简单的多层感知器。各种流场属性,包括静压、湍流动能和速度分量,都能在几秒钟内得到高精度预测。
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A Data-Driven Machine Learning Approach for Turbulent Flow Field Prediction Based on Direct Computational Fluid Dynamics Database
A novel approach is presented for predicting compressible turbulent flow fields using a neural network-based data-driven method. Accurate prediction in turbulent regions heavily relies on the resolution of available data. Traditional methods, employing image-based techniques by mapping scattered computational fluid dynamics (CFD) data onto Cartesian grids, encounter data scarcity in critical areas such as the boundary layer and wake. Recently, convolutional neural networks (CNN) have gained prominence as the most widely referenced technique in fluid dynamics, utilizing flow field images as datasets for flow field prediction. However, CNN requires datasets with a high pixel density to enhance training accuracy in crucial regions, thereby increasing the input data volume and machine training time. To address this challenge, our proposed method deviates from using flow field images and instead generates datasets directly from the flow field properties of CFD grid points. By employing this approach, several advantages are realized. Firstly, the network benefits from the favorable characteristics of unstructured grids, such as varying point spacing near the object surface and in the far field, which effectively reduces the amount of input data and consequently the machine training cost. Secondly, the construction of the training dataset eliminates the need for interpolation or extrapolation, thereby preserving the accuracy of CFD data. In this case, a simple multilayer perceptron can be trained using the proposed dataset. Various flow field properties, including static pressure, turbulent kinetic energy, and velocity components, can be predicted with high accuracy within a few seconds.
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来源期刊
Journal of Applied Fluid Mechanics
Journal of Applied Fluid Mechanics THERMODYNAMICS-MECHANICS
CiteScore
2.00
自引率
20.00%
发文量
138
审稿时长
>12 weeks
期刊介绍: The Journal of Applied Fluid Mechanics (JAFM) is an international, peer-reviewed journal which covers a wide range of theoretical, numerical and experimental aspects in fluid mechanics. The emphasis is on the applications in different engineering fields rather than on pure mathematical or physical aspects in fluid mechanics. Although many high quality journals pertaining to different aspects of fluid mechanics presently exist, research in the field is rapidly escalating. The motivation for this new fluid mechanics journal is driven by the following points: (1) there is a need to have an e-journal accessible to all fluid mechanics researchers, (2) scientists from third- world countries need a venue that does not incur publication costs, (3) quality papers deserve rapid and fast publication through an efficient peer review process, and (4) an outlet is needed for rapid dissemination of fluid mechanics conferences held in Asian countries. Pertaining to this latter point, there presently exist some excellent conferences devoted to the promotion of fluid mechanics in the region such as the Asian Congress of Fluid Mechanics which began in 1980 and nominally takes place in one of the Asian countries every two years. We hope that the proposed journal provides and additional impetus for promoting applied fluids research and associated activities in this continent. The journal is under the umbrella of the Physics Society of Iran with the collaboration of Isfahan University of Technology (IUT) .
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