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首页> 外文期刊>Instrumentation and Measurement, IEEE Transactions on >Two-Phase Slug Flow Characterization Using Artificial Neural Networks
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Two-Phase Slug Flow Characterization Using Artificial Neural Networks

机译:使用人工神经网络的两相段塞流表征

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Gas-liquid two-phase flows are present in nature and in different industrial activities alike, such as the chemical, petroleum, and nuclear industries. In this type of flow, the liquid and gas phases assume different spatial configurations inside the pipe, called flow patterns. The mathematical modeling of slug flow comprises from simple steady-state models to more complex models for transient regimes. Those models require closure relationships, e.g., empirical correlations and statistical distributions of characteristic flow parameters. In this paper, a model based on artificial neural networks (ANNs) for predicting the two-phase slug flow behavior is proposed. With this ANN model, the parameters that characterize the flow are extracted from the time series of void fractions obtained experimentally. The variables of interest are superficial velocities of the fluids, liquid slug and gas bubble lengths, and the bubble translational velocity and their standard deviations. The knowledge and understanding of those parameters will improve the characterization of the intermittent slug flows and will also provide information on the development of physical models that describe this phenomenon, such as the unit cell models, the drift flux model and the slug tracking model. In general, the estimation models based on ANNs showed good results compared with reference values obtained experimentally. The results show that the estimation models present a mean square error below 2%. The methodology presented here, combining experimentally obtained void fraction time series and ANN, is an appropriated method to infer flow parameters and thus to support slug flow characterization.
机译:气液两相流存在于自然界和不同的工业活动中,例如化学,石油和核工业。在这种类型的流中,液相和气相在管道内部采取不同的空间配置,称为流型。团状流的数学建模包括从简单的稳态模型到更复杂的瞬态模型。这些模型需要闭合关系,例如经验相关性和特征流量参数的统计分布。本文提出了一种基于人工神经网络(ANN)的模型,用于预测两相弹头的流动行为。使用该ANN模型,从实验获得的空隙率的时间序列中提取表征流动的参数。感兴趣的变量是流体的表面速度,液团和气泡长度,以及气泡平移速度及其标准偏差。这些参数的知识和理解将改善间歇性段塞流的特性,还将提供有关描述此现象的物理模型的开发信息,例如单位晶胞模型,漂移通量模型和段塞跟踪模型。通常,基于人工神经网络的估计模型与通过实验获得的参考值相比显示出良好的结果。结果表明,估计模型的均方误差低于2%。此处介绍的方法结合了实验获得的空隙率时间序列和ANN,是推导流量参数并因此支持段塞流表征的合适方法。

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