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Application of Convolution Neural Network to Flow Pattern Identification of Gas-Liquid Two-Phase Flow in Small-Size Pipe

机译:卷积神经网络在小尺寸管中燃气液两相流流动模式识别的应用

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Flow pattern is one of the most important parameters for gas-liquid two-phase flow. In this work, a new flow pattern identification method based on Convolution Neural Network (CNN) is presented. A 7-layer CNN structure is chosen, and the parameters of this network are determined by a training set. In order to verify the feasibility, experiments were carried out in horizontal pipe with the inner diameter of 4.0 mm. The results show that the presented method has better performance than traditional classification methods. The identification accuracies of four typical flow patterns are all above 92%. This work verifies the feasibility of applying CNN to flow pattern identification, and provides a good reference for parameter measurement of gas-liquid two-phase flow in small-size pipe.
机译:流动模式是气液两相流最重要的参数之一。在这项工作中,提出了一种基于卷积神经网络(CNN)的新的流动模式识别方法。选择7层CNN结构,并且该网络的参数由训练集确定。为了验证可行性,实验在水平管中进行,内径为4.0mm。结果表明,该方法具有比传统分类方法更好的性能。四种典型流动模式的识别精度均高于92%。这项工作验证了将CNN施加到流动模式识别的可行性,并为小型管道中的气液两相流的参数测量提供了良好的参考。

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