Prado Thiago de Lima, Dos Santos Lima Gustavo Zampier, Lobão-Soares Bruno, do Nascimento George C, Corso Gilberto, Fontenele-Araujo John, Kurths Jürgen, Lopes Sergio Roberto
Instituto de Engenharia, Ciência e Tecnologia, Universidade Federal dos Vales do Jequitinhonha e Mucuri, 39.440-000 Janaúa, Brazil.
Escola de Ciências e Tecnologia, Universidade Federal do Rio Grande do Norte, 59078-970 Natal, Brazil.
Chaos. 2018 Aug;28(8):085703. doi: 10.1063/1.5022154.
Recurrence analysis and its quantifiers are strongly dependent on the evaluation of the vicinity threshold parameter, i.e., the threshold to regard two points close enough in phase space to be considered as just one. We develop a new way to optimize the evaluation of the vicinity threshold in order to assure a higher level of sensitivity to recurrence quantifiers to allow the detection of even small changes in the dynamics. It is used to promote recurrence analysis as a tool to detect nonstationary behavior of time signals or space profiles. We show that the ability to detect small changes provides information about the present status of the physical process responsible to generate the signal and offers mechanisms to predict future states. Here, a higher sensitive recurrence analysis is proposed as a precursor, a tool to predict near future states of a particular system, based on just (experimentally) obtained signals of some available variables of the system. Comparisons with traditional methods of recurrence analysis show that the optimization method developed here is more sensitive to small variations occurring in a signal. The method is applied to numerically generated time series as well as experimental data from physiology.
递归分析及其量化指标在很大程度上依赖于邻近阈值参数的评估,即相空间中认为两点足够接近从而可视为同一点的阈值。我们开发了一种优化邻近阈值评估的新方法,以确保对递归量化指标具有更高的敏感度,从而能够检测到动态变化中哪怕很小的变化。它被用作一种工具来推动递归分析,以检测时间信号或空间轮廓的非平稳行为。我们表明,检测微小变化的能力可提供有关产生信号的物理过程当前状态的信息,并提供预测未来状态的机制。在此,基于系统某些可用变量(通过实验)获得的信号,提出一种更高灵敏度的递归分析作为预测特定系统近期未来状态的先兆和工具。与传统递归分析方法的比较表明,此处开发的优化方法对信号中出现的微小变化更为敏感。该方法被应用于数值生成的时间序列以及生理学实验数据。