Marwan Norbert, Wessel Niels, Meyerfeldt Udo, Schirdewan Alexander, Kurths Jürgen
Nonlinear Dynamics Group, Institute of Physics, University of Potsdam, Potsdam 14415, Germany.
Phys Rev E Stat Nonlin Soft Matter Phys. 2002 Aug;66(2 Pt 2):026702. doi: 10.1103/PhysRevE.66.026702. Epub 2002 Aug 6.
The knowledge of transitions between regular, laminar or chaotic behaviors is essential to understand the underlying mechanisms behind complex systems. While several linear approaches are often insufficient to describe such processes, there are several nonlinear methods that, however, require rather long time observations. To overcome these difficulties, we propose measures of complexity based on vertical structures in recurrence plots and apply them to the logistic map as well as to heart-rate-variability data. For the logistic map these measures enable us not only to detect transitions between chaotic and periodic states, but also to identify laminar states, i.e., chaos-chaos transitions. The traditional recurrence quantification analysis fails to detect the latter transitions. Applying our measures to the heart-rate-variability data, we are able to detect and quantify the laminar phases before a life-threatening cardiac arrhythmia occurs thereby facilitating a prediction of such an event. Our findings could be of importance for the therapy of malignant cardiac arrhythmias.
了解规则、层流或混沌行为之间的转变对于理解复杂系统背后的潜在机制至关重要。虽然几种线性方法往往不足以描述此类过程,但有几种非线性方法,不过,这些方法需要相当长的时间观测。为了克服这些困难,我们提出了基于递归图中垂直结构的复杂性度量,并将其应用于逻辑斯谛映射以及心率变异性数据。对于逻辑斯谛映射,这些度量不仅使我们能够检测混沌和周期状态之间的转变,还能识别层流状态,即混沌 - 混沌转变。传统的递归量化分析无法检测到后者的转变。将我们的度量应用于心率变异性数据,我们能够在危及生命的心律失常发生之前检测并量化层流阶段,从而有助于预测此类事件。我们的发现可能对恶性心律失常的治疗具有重要意义。