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The geometry of chaotic dynamics - A complex network perspective

机译:混沌动力学的几何学-复杂的网络视角

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Recently, several complex network approaches to time series analysis have been developed and applied to study a wide range of model systems as well as real-world data, e.g., geophysical or financial time series. Among these techniques, recurrence-based concepts and prominently ε-recurrence networks, most faithfully represent the geometrical fine structure of the attractors underlying chaotic (and less interestingly non-chaotic) time series. In this paper we demonstrate that the well known graph theoretical properties local clustering coefficient and global (network) transitivity can meaningfully be exploited to define two new local and two new global measures of dimension in phase space: local upper and lower clustering dimension as well as global upper and lower transitivity dimension. Rigorous analytical as well as numerical results for self-similar sets and simple chaotic model systems suggest that these measures are well-behaved in most non-pathological situations and that they can be estimated reasonably well using ε-recurrence networks constructed from relatively short time series. Moreover, we study the relationship between clustering and transitivity dimensions on the one hand, and traditional measures like pointwise dimension or local Lyapunov dimension on the other hand. We also provide further evidence that the local clustering coefficients, or equivalently the local clustering dimensions, are useful for identifying unstable periodic orbits and other dynamically invariant objects from time series. Our results demonstrate that ε-recurrence networks exhibit an important link between dynamical systems and graph theory.
机译:最近,已经开发了几种用于时间序列分析的复杂网络方法,并将其用于研究广泛的模型系统以及现实世界的数据,例如地球物理或金融时间序列。在这些技术中,基于递归的概念和突出的ε递归网络最忠实地表示了混沌(且不太有趣的是非混沌)时间序列的吸引子的几何精细结构。在本文中,我们证明了可以有效地利用众所周知的图理论属性局部聚类系数和全局(网络)传递性来定义相空间中两个新的局部和两个新的全局度量:局部上聚类和下聚类维以及全球上下可传递性维度。自相似集和简单混沌模型系统的严格分析和数值结果表明,这些措施在大多数非病理情况下表现良好,并且可以使用从相对短的时间序列构建的ε递归网络合理地估计它们。 。此外,我们一方面研究聚类与传递性维度之间的关系,另一方面研究诸如点向维度或局部Lyapunov维度之类的传统度量。我们还提供了进一步的证据,即局部聚类系数或等效的局部聚类维数对于从时间序列中识别不稳定的周期性轨道和其他动态不变的对象很有用。我们的结果表明,递归网络在动力学系统和图论之间展现出重要的联系。

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