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首页> 外文期刊>International Journal of Multiphase Flow >Bubble patterns recognition using neural networks: Application to the analysis of a two-phase bubbly jet
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Bubble patterns recognition using neural networks: Application to the analysis of a two-phase bubbly jet

机译:使用神经网络的泡沫模式识别:应用于分析两相鼓泡

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摘要

Gas-liquid two-phase bubbly flows are found in different areas of science and technology such as nuclear energy, chemical industry, or piping systems. Optical diagnostics of two-phase bubbly flows with modern panoramic techniques makes it possible to capture simultaneously instantaneous characteristics of both continuous and dispersed phases with a high spatial resolution. In this paper, we introduce a novel approach based on neural networks to recognize bubble patterns in images and identify their geometric parameters. The originality of the proposed method consists in training of a neural network ensemble using synthetic images that resemble real photographs gathered in experiment. The use of neural networks in combination with automatically generated data allowed us to detect overlapping, blurred, and non-spherical bubbles in a broad range of volume gas fractions. Experiments on a turbulent bubbly jet proved that the implemented method increases the identification accuracy, reducing errors of various kinds, and lowers the processing time compared to conventional recognition methods. Furthermore, utilizing the new method of bubbles recognition, the primary physical parameters of a dispersed phase, such as bubble size distribution and local gas content, were calculated in a near-to-nozzle region of the bubbly jet. The obtained results and integral experimental parameters, especially volume gas fraction, are in good agreement with each other. (C) 2020 The Authors. Published by Elsevier Ltd.
机译:在核能,化学工业或管道系统等不同的科学和技术领域中发现了气液两相泡泡流。具有现代全景技术的两相鼓泡流的光学诊断使得可以具有高空间分辨率的连续和分散相的同时瞬时特性。在本文中,我们介绍了一种基于神经网络的新方法,以识别图像中的气泡模式并识别它们的几何参数。所提出的方法的原创性包括使用类似于实验中收集的真实照片的合成图像训练神经网络集合。使用神经网络与自动产生的数据组合使用,使我们能够检测在宽范围的体积气体级分中的重叠,模糊和非球形气泡。关于湍流泡沫的实验证明了实现的方法增加了识别精度,减少了各种误差,与传统识别方法相比降低了处理时间。此外,利用新的气泡识别方法,在起动喷射的近喷嘴区域中计算分散相的主要物理参数,例如气泡尺寸分布和局部气体含量。获得的结果和整体实验参数,尤其是体积气体分数,彼此吻合良好。 (c)2020作者。 elsevier有限公司出版

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