MLFV:预测紊流热和流体流动特征的新型机器学习特征向量方法

IF 4 3区 工程技术 Q1 MATHEMATICS, INTERDISCIPLINARY APPLICATIONS
Iman Bashtani, Javad Abolfazli Esfahani
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引用次数: 0

摘要

目的 本研究旨在引入一种新型机器学习特征向量(MLFV)方法,利用机器学习克服耗时的计算流体动力学(CFD)模拟,以可接受的精度快速预测湍流特性。然后,MLFV 通过一个棒状滤波器学习数据之间的关系,该滤波器被命名为特征向量,通过在其上定义函数来学习特征。结果结果表明,MLFV 和 CFD 等值线以及散点图在预测数据和求解数据之间具有良好的一致性,R2 ≃1。此外,误差百分比等值线图和直方图显示,在 Re = 20,000 条件下,预测速度场、温度场和湍流动能场的误差百分比分别为 MAPE = 7.90E-02、1.45E-02、7.32E-02 和 NRMSE = 1.30E-04、1.61E-03、4.54E-05。原创性/价值本文介绍了一种名为 MLFV 的新颖、创新和超快方法,以解决与传统 CFD 方法相关的耗时挑战,从而实时预测湍流热和流体流动的物理特性,该方法具有基于小数据训练的优越性和可接受的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
MLFV: a novel machine learning feature vector method to predict characteristics of turbulent heat and fluid flow

Purpose

This study aims to introduce a novel machine learning feature vector (MLFV) method to bring machine learning to overcome the time-consuming computational fluid dynamics (CFD) simulations for rapidly predicting turbulent flow characteristics with acceptable accuracy.

Design/methodology/approach

In this method, CFD snapshots are encoded in a tensor as the input training data. Then, the MLFV learns the relationship between data with a rod filter, which is named feature vector, to learn features by defining functions on it. To demonstrate the accuracy of the MLFV, this method is used to predict the velocity, temperature and turbulent kinetic energy fields of turbulent flow passing over an innovative nature-inspired Dolphin turbulator based on only ten CFD data.

Findings

The results indicate that MLFV and CFD contours alongside scatter plots have a good agreement between predicted and solved data with R2 ≃ 1. Also, the error percentage contours and histograms reveal the high precisions of predictions with MAPE = 7.90E-02, 1.45E-02, 7.32E-02 and NRMSE = 1.30E-04, 1.61E-03, 4.54E-05 for prediction velocity, temperature, turbulent kinetic energy fields at Re = 20,000, respectively.

Practical implications

The method can have state-of-the-art applications in a wide range of CFD simulations with the ability to train based on small data, which is practical and logical regarding the number of required tests.

Originality/value

The paper introduces a novel, innovative and super-fast method named MLFV to address the time-consuming challenges associated with the traditional CFD approach to predict the physics of turbulent heat and fluid flow in real time with the superiority of training based on small data with acceptable accuracy.

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来源期刊
CiteScore
9.50
自引率
11.90%
发文量
100
审稿时长
6-12 weeks
期刊介绍: The main objective of this international journal is to provide applied mathematicians, engineers and scientists engaged in computer-aided design and research in computational heat transfer and fluid dynamics, whether in academic institutions of industry, with timely and accessible information on the development, refinement and application of computer-based numerical techniques for solving problems in heat and fluid flow. - See more at: http://emeraldgrouppublishing.com/products/journals/journals.htm?id=hff#sthash.Kf80GRt8.dpuf
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