Deep learning-based optical flow analysis of two-dimensional Rayleigh scattering imaging of high-speed flows

IF 1.7 4区 计算机科学 Q3 COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS
Daniel Zhang, Zifeng Yang
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引用次数: 0

Abstract

Abstract

Velocity field quantification for high-speed flows is of fundamental importance to understand flow dynamics, turbulence, and flow–structure interactions. Optical velocimetry techniques commonly provide sparse information in the flows. Dense fields of velocity vectors with high spatial resolutions are indispensable for detailed analysis of complex motion patterns and accurate motion tracking within the field of view. In the present work, two-dimensional (2D) Rayleigh scattering imaging (RSI) at a rate of 10- to 100-kHz was utilized to quantify the high-speed flow velocity by employing deep learning-based optical flow analysis, along with density and temperature fields from Rayleigh scattering intensity profiles. High-speed Rayleigh scattering images are highly spatially resolved, have smooth gradients without intensity discontinuities, and precisely track key features of the flows. The deep learning-based optical flow method utilizes recurrent neural network architecture to extract the per-pixel features of both input images, calculate correlation from all pairs of the features, and get training by recurrently updating the optical flow. 2D instantaneous velocity fields of both nonreacting and reacting flows measured by RSI were obtained from deep learning-based optical flow analysis, thus extending RSI as a non-intrusive, nonseeded, and multiscalar measurement technique of high-speed nonreacting and reacting flows.

Graphical abstract

Abstract Image

基于深度学习的高速流二维瑞利散射成像光流分析
摘要 高速流动的速度场量化对于了解流动动力学、湍流和流动与结构之间的相互作用至关重要。光学测速技术通常能提供稀疏的流动信息。高空间分辨率的密集速度矢量场对于详细分析复杂的运动模式和在视场内精确跟踪运动是不可或缺的。在本研究中,利用基于深度学习的光流分析以及瑞利散射强度剖面的密度和温度场,以 10 到 100 kHz 的速率进行二维(2D)瑞利散射成像(RSI),从而量化高速流动的速度。高速瑞利散射图像具有很高的空间分辨率,梯度平滑,无强度不连续现象,可精确跟踪流动的关键特征。基于深度学习的光流方法利用递归神经网络架构提取两幅输入图像的每像素特征,计算所有特征对的相关性,并通过递归更新光流获得训练。通过基于深度学习的光流分析,获得了利用 RSI 测量的非反应流和反应流的二维瞬时速度场,从而将 RSI 扩展为一种非侵入式、无栅格、多磁盘的高速非反应流和反应流测量技术。
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来源期刊
Journal of Visualization
Journal of Visualization COMPUTER SCIENCE, INTERDISCIPLINARY APPLICATIONS-IMAGING SCIENCE & PHOTOGRAPHIC TECHNOLOGY
CiteScore
3.40
自引率
5.90%
发文量
79
审稿时长
>12 weeks
期刊介绍: Visualization is an interdisciplinary imaging science devoted to making the invisible visible through the techniques of experimental visualization and computer-aided visualization. The scope of the Journal is to provide a place to exchange information on the latest visualization technology and its application by the presentation of latest papers of both researchers and technicians.
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