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Pattern recognition for bubbly flows with vapor or gas-liquid interfaces using U-Net architecture

机译:使用U-NET架构的蒸气或气液界面具有蒸气或气液界面的模式识别

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We apply deep learning algorithms to tackle the bubble recognition task relying on the experimental video recordings of the vapor cavities growing during the water pool boiling due to the heated bottom and an isothermal multiphase flow in a channel. As a basic network architecture we use U-Net with ResNet 34 and ResNet 50 encoders depending on the complexity of the image background. Three classes have been introduced, i.e. the background, bubble and its boundary allowing to post-process some geometric characteristics in a straightforward manner. We demonstrate the capabilities by tracking the growth of an ensemble of vapor bubbles attached to the heater and studying the size distribution of bubbles in a channel.
机译:我们应用深度学习算法来解决依赖于在水池沸腾期间生长的蒸汽腔的实验视频录制的泡沫识别任务,该底部沸腾引起的底部和通道中的等温多相流动。作为基本网络架构,我们使用U-Net与Reset34和Reset50编码器,具体取决于图像背景的复杂性。已经介绍了三个类,即背景,气泡及其边界,允许以直接的方式处理一些几何特征。我们通过跟踪附着在加热器上的蒸汽气泡的集合并研究通道中气泡的尺寸分布来展示能力。

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