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Complex Networks with Community Structure from Multivariate Signals in Gas-liquid Two-phase Flow

机译:复杂网络与群落结构,来自气液两相流的多变量信号

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Based on the multivariate time series measured from gas-liquid two-phase flow, we construct complex networks to investigate different gas-liquid flow patterns. The results indicate that our approach can well distinguish and characterize different flow patterns in the sense that different communities correspond to different flow patterns and the community structure can characterize the flow pattern dynamical properties. In this paper, we provide a new perspective and a novel way for understanding the complex dynamics underlying two-phase flow in terms of complex network theory.
机译:基于由气液两相流测量的多变量时间序列,我们构建复杂网络以研究不同的气液流动模式。结果表明,我们的方法可以在不同的社区对应于不同的流动模式和社区结构可以表征流动模式动态特性的意义上很好地区分和表征不同的流动模式。在本文中,我们提供了一种新的视角和一种用于了解复杂网络理论方面的复杂动态的新的透视和新的方法。

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