利用人工神经网络进行流体体积法的三维界面法线预测

IF 2.5 3区 工程技术 Q2 MECHANICS European Journal of Mechanics B-fluids Pub Date : 2024-03-15 DOI:10.1016/j.euromechflu.2024.03.004
Jinlong Li , Jia Liu , Kang Li , Shuai Zhang , Wenjie Xu , Duanyang Zhuang , Liangtong Zhan , Yunmin Chen
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引用次数: 0

摘要

在使用流体体积(VOF)方法对多相流进行数值模拟时,界面法向的计算是一个关键点。本文采用机器学习方法建立了一个人工神经网络(ANN)模型,以便根据相邻体积分数更准确地预测局部法向矢量。不同半径的球面与结构背景网格相交,生成 84328 组数据:3×3×3 相邻体积分数作为输入,法向量作为输出。将 90% 的数据作为训练数据集,通过优化隐层数和每层神经元数,训练出良好的 ANN 模型。利用剩余的 10% 数据,使用 ANN-VOF 以及最常用的 YOUNG 和 HEIGHT-FUNCTION 方法进行正态预测。ANN-VOF/YOUNG/ HEIGHT-FUNCTION 方法的 RMSE 分别为 0.008/0.022/0.045。在重建正弦表面时,ANN-VOF/YOUNG/HEIGHT-FUNCTION 方法的均方根误差分别为 0.008/0.018/0.041。结果表明,ANN-VOF 方法在界面法线预测方面具有更好的性能。所提出的方法计算逻辑简单,不需要处理复杂的几何拓扑结构,这为应用于其他更复杂的网格奠定了基础。
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Three dimensional interface normal prediction for Volume-of-Fluid method using artificial neural network

In the numerical simulations of multi-phase flow using Volume-of-Fluid (VOF) method, the calculation of the interface normal is a crucial point. In this paper, a machine learning method is used to develop an artificial neural network (ANN) model to make more accurate prediction of the local normal vector from neighboring volume fractions. Spherical surfaces with different radii are intersected with a structural background grid to generate 84328 groups of data: 3×3×3 neighboring volume fractions are used as input, and normal vector as output. Using 90% data as training dataset, the ANN model is well trained by optimizing the number of hidden layers and the number of neurons on each layer. Using the remaining 10% data, normal predictions are made using ANN-VOF and the most used YOUNG and HEIGHT-FUNCTION methods. The RMSE of the ANN-VOF/YOUNG/ HEIGHT-FUNCTION methods are 0.008/0.022/0.045 respectively. In the reconstruction of a sinusoidal surface, the MSE of the ANN-VOF/YOUNG/ HEIGHT-FUNCTION methods are 0.008/0.018/0.041. It is demonstrated that the ANN-VOF method has better performance for interface normal prediction. The proposed method has a simple computational logic and does not need to deal with complex geometric topology, which lays the foundation for application in other more complex grids.

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来源期刊
CiteScore
5.90
自引率
3.80%
发文量
127
审稿时长
58 days
期刊介绍: The European Journal of Mechanics - B/Fluids publishes papers in all fields of fluid mechanics. Although investigations in well-established areas are within the scope of the journal, recent developments and innovative ideas are particularly welcome. Theoretical, computational and experimental papers are equally welcome. Mathematical methods, be they deterministic or stochastic, analytical or numerical, will be accepted provided they serve to clarify some identifiable problems in fluid mechanics, and provided the significance of results is explained. Similarly, experimental papers must add physical insight in to the understanding of fluid mechanics.
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