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Multivariate weighted complex network analysis for characterizing nonlinear dynamic behavior in two-phase flow

机译:表征两相流非线性动力学行为的多元加权复杂网络分析

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摘要

Charactering nonlinear dynamic behavior in gas-liquid two-phase flow is a contemporary and challenging problem of significant importance. We in this paper first systematically carry out gas-liquid two-phase flow experiments in a small diameter pipe for measuring local flow information from different flow patterns. Then, we propose a modality transition-based network for mapping the experimental multivariate measurements into a directed weighted complex network. In particular, we derive multivariate complex networks from different flow conditions and demonstrate that the generated networks corresponding to different flow patterns exhibit distinct topological structures. For each generated network, we exploit weighted clustering coefficient and closeness centrality to quantitatively probe the network topological properties associated with dynamic flow behavior. The results suggest that our multivariate complex network analysis allows quantitatively uncovering the transitions of distinct flow patterns and yields deep insights into the nonlinear dynamic behavior underlying gas-liquid flows. (C) 2014 Elsevier Inc. All rights reserved.
机译:表征气液两相流中的非线性动力学行为是当代的,具有挑战性的,非常重要的问题。我们首先在小直径管道中系统地进行气液两相流实验,以测量来自不同流型的局部流信息。然后,我们提出了一种基于模态转换的网络,用于将实验多变量测量值映射到有向加权复杂网络中。特别是,我们从不同的流动条件得出多元复杂的网络,并证明对应于不同流动模式的生成网络表现出不同的拓扑结构。对于每个生成的网络,我们利用加权聚类系数和紧密度中心性来定量探查与动态流动行为相关的网络拓扑特性。结果表明,我们的多元复杂网络分析可以定量揭示不同流型的转变,并对气液流的非线性动力学行为产生深刻的见解。 (C)2014 Elsevier Inc.保留所有权利。

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