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Nonlinear characterization of oil-gas-water three-phase flow in complex networks

机译:复杂网络中油气水三相流的非线性表征

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摘要

Understanding the dynamics of oil-gas-water three-phase flow has been a challenge in the fields of nonlinear dynamics and fluid mechanics. We systematically carried out oil-gas-water three-phase flow experiments for measuring the time series of flow signals, which is studied in terms of the mapping from time series to complex networks. Two network mapping methods are proposed for the analysis and identification of flow pattern dynamics, i.e. Flow Pattern Complex Network (FPCN) and Fluid Dynamic Complex Network (FDCN). Through detecting the community structure of FPCN based on K-means clustering, distinct flow patterns can be successfully distinguished and identified. A number of FDCN's under different flow conditions are constructed in order to reveal the dynamical characteristics of three-phase flows. The network information entropy of FDCN is sensitive to the transition among different flow patterns, which can be used to characterize nonlinear dynamics of the three-phase flow. These interesting and significant findings suggest that complex networks can be a potentially powerful tool for uncovering the nonlinear dynamics of oil-gas-water three-phase flows.
机译:在非线性动力学和流体力学领域,了解油气水三相流的动力学一直是一个挑战。我们系统地进行了油气水三相流测量流量信号时间序列的实验,并从时间序列到复杂网络的映射进行了研究。提出了两种网络映射方法来分析和识别流型动力学,即流型复杂网络(FPCN)和流体动态复杂网络(FDCN)。通过基于K-均值聚类的FPCN社区结构检测,可以成功地区分和识别出不同的流型。为了揭示三相流的动力学特性,构造了许多在不同流动条件下的FDCN。 FDCN的网络信息熵对不同流型之间的转换很敏感,可用于表征三相流的非线性动力学。这些有趣且有意义的发现表明,复杂的网络可能是揭示油气水三相流非线性动力学的潜在强大工具。

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