限制性非线性模型与机器学习技术相结合的主动控制方法,用于减少湍流通道中的阻力

IF 3.6 2区 工程技术 Q1 MECHANICS Journal of Fluid Mechanics Pub Date : 2024-09-13 DOI:10.1017/jfm.2024.558
Bing-Zheng Han, Wei-Xi Huang, Chun-Xiao Xu
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引用次数: 0

摘要

机器学习在流量控制领域的实际应用受到了限制,因为它需要大量的训练费用。在本研究中,利用受限非线性(RNL)模型的数据训练的卷积神经网络(CNN)被用来预测湍流通道流中 y^+=10$ 处检测平面上的法向速度,预测的速度被用作减少阻力的吹壁和吸力。在直接数值模拟(DNS)中使用训练有素的 CNN 进行了主动控制测试。根据跨向和流向的壁面剪应力,分别获得了高达 19% 和 16% 的显著阻力减小率。此外,我们还将 RNL 模型与强化学习(RL)相结合,探索了壁面湍流的在线控制。RL 的构建是基于对壁面剪应力的观测来确定最佳的壁面吹吸力,而不使用检测平面上的标签数据进行训练。控制和训练过程在 RNL 流场中同步进行。通过 RL 发现的控制策略与之前通过既定方法获得的阻力降低率相似。此外,与 DNS-RL 模型相比,在 Re_{\tau }=950$ 时,训练成本降低了 30 多倍。本结果提供了一个视角,即结合 RNL 模型和机器学习控制来减少壁面湍流阻力是有效的,而且计算经济。此外,这种方法还可以很容易地扩展到更高雷诺数的流动中。
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A combined active control method of restricted nonlinear model and machine learning technology for drag reduction in turbulent channel flow
The practical implementation of machine learning in flow control is limited due to its significant training expenses. In the present study the convolutional neural network (CNN) trained with the data of the restricted nonlinear (RNL) model is used to predict the normal velocity on a detection plane at $y^+=10$ in a turbulent channel flow, and the predicted velocity is used as wall blowing and suction for drag reduction. An active control test is carried out by using the well-trained CNN in direct numerical simulation (DNS). Substantial drag reduction rates up to 19 % and 16 % are obtained based on the spanwise and streamwise wall shear stresses, respectively. Furthermore, we explore the online control of wall turbulence by combining the RNL model with reinforcement learning (RL). The RL is constructed to determine the optimal wall blowing and suction based on its observation of the wall shear stresses without using the label data on the detection plane for training. The controlling and training processes are conducted synchronously in a RNL flow field. The control strategy discovered by RL has similar drag reduction rates with those obtained previously by the established method. Also, the training cost decreases by over thirty times at $Re_{\tau }=950$ compared with the DNS-RL model. The present results provide a perspective that combining the RNL model with machine learning control for drag reduction in wall turbulence can be effective and computationally economical. Also, this approach can be easily extended to flows at higher Reynolds numbers.
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来源期刊
CiteScore
6.50
自引率
27.00%
发文量
945
审稿时长
5.1 months
期刊介绍: Journal of Fluid Mechanics is the leading international journal in the field and is essential reading for all those concerned with developments in fluid mechanics. It publishes authoritative articles covering theoretical, computational and experimental investigations of all aspects of the mechanics of fluids. Each issue contains papers on both the fundamental aspects of fluid mechanics, and their applications to other fields such as aeronautics, astrophysics, biology, chemical and mechanical engineering, hydraulics, meteorology, oceanography, geology, acoustics and combustion.
期刊最新文献
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