A bottom-up approach for recurrence detection based on sampling distance

R. Delage, T. Nakata
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引用次数: 1

Abstract

One of the major problems faced in the recurrence analysis of dynamical systems is the tangential motion effect affecting the structures in recurrence plots and their quantification. This issue roots to the choice of a threshold for recurrence, making it a crucial parameter for such analyses. It has been shown that a variable threshold following the dynamical changes of the system is more suited to the analysis of non-stationary data as it mitigates this effect. We study here the use of the distance separating successive points in the phase space as a reference for the recurrence threshold. The method relies on a single parameter while qualitatively and quantitatively providing stable recurrence structures as the previously suggested threshold based on the local maximum pairwise distance. This complete bottom-up approach is shown to be beneficial in the presence of abrupt transitions. It is also fairly noise-resistant and is not dependent on the sampling frequency in its normalized formulation. Furthermore, the sampling distance provides a clear reference for the occurrence of the tangential motion effect, allowing to define a default value for the threshold parameter to avoid it.
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基于采样距离的自底向上的重复检测方法
动力系统递归分析中面临的主要问题之一是影响递归图结构的切向运动效应及其量化。这个问题的根源在于选择一个递归阈值,使其成为这种分析的关键参数。已经表明,随着系统的动态变化而变化的阈值更适合于分析非平稳数据,因为它减轻了这种影响。我们在此研究使用相空间中连续点之间的距离作为递归阈值的参考。该方法依赖于单个参数,同时定性和定量地提供稳定的递归结构,作为先前建议的基于局部最大成对距离的阈值。这种完全自底向上的方法在出现突变时是有益的。它还具有相当的抗噪声性,并且不依赖于其归一化公式中的采样频率。此外,采样距离为切向运动效应的发生提供了一个明确的参考,允许为阈值参数定义一个默认值来避免切向运动效应。
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