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Strength distribution in complex network for analyzing experimental two-phase flow signals

机译:复杂网络中的强度分布分析实验两相流量信号

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We propose a reliable method for constructing complex network from a time series based on phase space reconstruction and construct complex flow networks using the conductance fluctuating signals measured from gas-liquid two-phase flow experiment. After detecting the node strength distribution of the networks, we show that the strength distribution of the resulting networks can be well fitted with a power law. Furthermore, we using the method of chaotic recurrence plot explore the physical implications of network strength distribution. To investigate the dynamic characteristics of gas-liquid flow, we construct 50 complex flow networks under different flow conditions, and find that the power-law exponent, which is sensitive to the flow pattern transition, can really characterize the nonlinear dynamics of gas-liquid two-phase flow. In this paper, from a new perspective, we not only propose a novel method to study nonlinear time series signals in practice, but also indicate that complex network may be a powerful tool for exploring complex nonlinear dynamic systems.
机译:我们提出了一种可靠的方法,用于从基于相位空间重建的时间序列构建复杂网络,并使用从气液两相流动实验中测量的电导波动信号构建复杂的流量网络。在检测到网络的节点强度分布之后,我们表明所得到的网络的强度分布可以很好地装配电力法。此外,我们使用混沌复发策划方法探索网络强度分布的物理影响。为了研究气液流动的动态特性,我们在不同的流动条件下构建50个复杂的流量网络,并找到对流动模式过渡敏感的电力法指数,可以真正表征气液的非线性动态两相流。在本文中,从新的角度来看,我们不仅提出了一种新的方法来研究非线性时间序列信号在实践中,还表明复杂的网络可以是用于探索复杂非线性动态系统的强大工具。

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