Bubble behavior parameters extraction and analysis during pool boiling based on deep-learning method

IF 3.6 2区 工程技术 Q1 MECHANICS
Yanwei Zhao , Zhibo Wang , Qi Liu , Yuxin Wu , Junfu Lyu
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引用次数: 0

Abstract

The nucleate pool boiling plays an important role in thermal and chemical engineering applications. Analyzing bubble dynamics at nucleation site is crucial to improve the understanding of boiling heat transfer mechanism. Quantitative extraction of bubble parameters from high-speed visualized images is a labor-intensitive and time-consuming task making it necessary for automatically detect single bubble growth and measure boiling characteristic parameters.

In the present work, we proposed a deep learning based self-adaptive statistical algorithm for extraction of bubble behavior parameters quickly and automatically from numerous high-speed visualization images looking from the side view of a boiling chamber. A dataset was constructed for training and performance evaluation based on experimental data of saline solution pool boiling. The StarDist and U-Net convolutional neural network were combined in the algorithm so that more exact segmentation of the bubbles can be identified. Based on the segmentation results, a post-processing program was developed to extract the sequential variation of bubbles during consecutive cycles at nucleation sites. The dynamic characteristic parameters that affect heat transfer, such as nucleation density, bubble departure diameter, departure frequency, and wait time under different heat flux were obtained quantitatively. The comparison of automatic extraction algorithm and manual processing proves the reliability and superiority of our method. This work indicates that the proposed method has great potential to be widely applied as an efficient and universal tool for processing different types of bubble shadowgraph images.

Abstract Image

基于深度学习方法的水池沸腾过程中气泡行为参数提取与分析
成核池沸腾在热学和化学工程应用中发挥着重要作用。分析成核部位的气泡动态对于加深对沸腾传热机理的理解至关重要。从高速可视化图像中定量提取气泡参数是一项费时费力的工作,因此有必要自动检测单个气泡的生长并测量沸腾特征参数。在本研究中,我们提出了一种基于深度学习的自适应统计算法,用于从沸腾室侧视图的大量高速可视化图像中快速自动提取气泡行为参数。基于生理盐水池沸腾的实验数据,我们构建了一个用于训练和性能评估的数据集。算法中结合了 StarDist 和 U-Net 卷积神经网络,从而可以更精确地识别气泡的分割。根据分割结果,开发了一个后处理程序,以提取成核点连续循环过程中气泡的顺序变化。定量获得了不同热通量下的成核密度、气泡离去直径、离去频率和等待时间等影响传热的动态特征参数。自动提取算法与人工处理的比较证明了我们方法的可靠性和优越性。这项工作表明,所提出的方法作为处理不同类型气泡阴影图图像的高效通用工具,具有广泛应用的巨大潜力。
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来源期刊
CiteScore
7.30
自引率
10.50%
发文量
244
审稿时长
4 months
期刊介绍: The International Journal of Multiphase Flow publishes analytical, numerical and experimental articles of lasting interest. The scope of the journal includes all aspects of mass, momentum and energy exchange phenomena among different phases such as occur in disperse flows, gas–liquid and liquid–liquid flows, flows in porous media, boiling, granular flows and others. The journal publishes full papers, brief communications and conference announcements.
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