基于CNNs和mlp的超音速边界层斜T-S波数据驱动的流动不稳定性分析方法

IF 2.6 3区 工程技术 Q2 ENGINEERING, MECHANICAL
Lei Qiao , Xi Jiang , Jiakun Fan , Yutian Wang , Lu Xie , Ningjuan Dong , Jiakuan Xu , Junqiang Bai
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引用次数: 0

摘要

斜流不稳定是超声速边界层中最关键的流动不稳定类型之一。然而,传统的线性稳定性理论(LST)分析需要在体拟合正交坐标系下计算速度和温度沿壁法向的二阶导数,猜测初始特征值,求解特征值问题,操作繁琐,阻碍了其工程应用。为了解决这些问题,本文引入卷积神经网络(cnn)和多层感知器(mlp),通过不同的技术路线取代传统的特征值求解过程。前者利用LST分析中层流边界层的相似解为cnn构建训练样本,预测不同斜T-S波的特征值;后者利用人工构建的LST分析中层流边界层的非相似解为mlp生成训练数据,预测最不稳定放大因子的包络。通过许多不同雷诺数、马赫数和翼型(即改变压力梯度)的情况进行验证,两种模型都能令人满意地预测微扰放大因子。值得注意的是,所提出的神经网络模型只需要一次训练,并且可以无限地重复使用而无需再训练。研究还表明,使用层流边界层的相似解作为训练样本,在预测放大因子包络时存在显著偏差,且通用性有限。这些发现为超声速边界层转捩预测提供了有效的数据驱动替代方案,促进了线性稳定性理论在复杂流动场景中的工程应用,同时明确了不同技术方法的适用性边界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Data-driven flow instability analysis methods for oblique T-S waves in supersonic boundary layers using CNNs and MLPs
Oblique Tollmien-Schlichting (T-S) wave instability is one of the most critical flow instability types in supersonic boundary layers. However, traditional linear stability theory (LST) analysis requires calculating the second derivatives of velocity and temperature profiles along the wall-normal direction in body-fitted orthogonal coordinate systems, guessing initial eigenvalues, and solving eigenvalue problems, which is cumbersome and hinders its engineering applications. To address these issues, this paper introduces convolutional neural networks (CNNs) and multilayer perceptrons (MLPs) to replace the traditional eigenvalue-solving process through different technical routes. The former constructs training samples for CNNs using similarity solutions of laminar boundary layers in LST analysis to predict eigenvalues of different oblique T-S waves, while the latter uses artificially constructed non-similarity solutions of laminar boundary layers in LST analysis to generate training data for MLPs to predict the envelope of the most unstable amplification factors. Validated through numerous cases with varying Reynolds numbers, Mach numbers, and airfoils (i.e., altering pressure gradients), both models achieve satisfactory predictions of perturbation amplification factors. Notably, the proposed neural network models require only one-time training and can be reused infinitely without retraining. The study also reveals that using similarity solutions of laminar boundary layers as training samples leads to significant deviations in predicting amplification factor envelopes and results in limited generality. These findings provide efficient data-driven alternatives for supersonic boundary layer transition prediction, promoting the engineering application of linear stability theory in complex flow scenarios while clarifying the applicability boundaries of different technical approaches.
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来源期刊
International Journal of Heat and Fluid Flow
International Journal of Heat and Fluid Flow 工程技术-工程:机械
CiteScore
5.00
自引率
7.70%
发文量
131
审稿时长
33 days
期刊介绍: The International Journal of Heat and Fluid Flow welcomes high-quality original contributions on experimental, computational, and physical aspects of convective heat transfer and fluid dynamics relevant to engineering or the environment, including multiphase and microscale flows. Papers reporting the application of these disciplines to design and development, with emphasis on new technological fields, are also welcomed. Some of these new fields include microscale electronic and mechanical systems; medical and biological systems; and thermal and flow control in both the internal and external environment.
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