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Complex network analysis of forced synchronization in a hydrodynamically self-excited jet

机译:流体动力学自激射流中强制同步的复杂网络分析

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Previous experiments by Li and Juniper (2013) have shown that a hydrodynamically self-excited jet can synchronize with external acoustic forcing via one of two possible routes: a saddle-node (SN) bifurcation or a torus-death (TD) bifurcation. In this study, we use complex networks to analyze and forecast these two routes to synchronization in a prototypical self-excited flow - an axisymmetric low-density jet at an operating condition close to its first Hopf point. We build the complex networks using two different methods: the visibility algorithm and the recurrence condition. We find that the networks built with the visibility algorithm are high-clustering, hierarchical, and assortative in the degree of their vertices, although only the TD networks are scale free. Nevertheless, we find that the assortativity coefficient is a sufficiently sensitive indicator by which to distinguish between the SN and TD routes to synchronization and to forecast the onset of synchronization. As for the networks built with the recurrence condition, we find that their topological features differ between the two routes to synchronization, but vary predictably along either route. We quantify these variations using statistical measures such as the mean degree, spectral radius, and transitivity dimension. This study shows that complex networks can be a useful tool for distinguishing between the SN and TD routes to synchronization, and for forecasting the proximity of a system to its synchronization boundaries. These findings could open up new opportunities for complex networks to be used in the development of open-loop control strategies for hydrodynamically self-excited flows.
机译:通过Li和杜松(2013)的先前实验表明,流体动力学自激射流可以通过两条可能的路线之一与外部声学强制同步:鞍座节点(Sn)分叉或圆环死亡(Td)分叉。在这项研究中,我们使用复杂的网络来分析和预测这两条路线以在原型自我激发流中同步 - 在靠近其第一跳蚤点的操作条件下的轴对称低密度喷射。我们使用两种不同的方法构建复杂网络:可见性算法和复发条件。我们发现,使用可见性算法构建的网络是在其顶点的程度上的高群集,分层和分类,尽管只有TD网络被缩放。尽管如此,我们发现assortativity系数是一个足够敏感的指标,通过该指标,以区分SN和TD路线来同步和预测同步的开始。至于使用重新发生条件构建的网络,我们发现它们的拓扑功能在两条路线之间有所不同,但沿途可以可预测地变化。我们使用统计措施(如平均度,光谱半径和传递维度)量化这些变化。本研究表明,复杂的网络可以是用于区分SN和TD路径来同步的有用工具,并用于预测系统的接近度到其同步边界。这些调查结果可以为复杂网络开辟新的机会,以便在开放的开环控制策略开发中,用于流体动力学自我激发流动。

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