Network Dynamics, Max Planck Institute for Dynamics and Self-Organization (MPIDS), 37077 Göttingen, Germany.
Technical University of Darmstadt, 64289 Darmstadt, Germany.
Phys Rev E. 2017 Sep;96(3-1):032220. doi: 10.1103/PhysRevE.96.032220. Epub 2017 Sep 19.
Critical transitions occur in a variety of dynamical systems. Here we employ quantifiers of chaos to identify changes in the dynamical structure of complex systems preceding critical transitions. As suitable indicator variables for critical transitions, we consider changes in growth rates and directions of covariant Lyapunov vectors. Studying critical transitions in several models of fast-slow systems, i.e., a network of coupled FitzHugh-Nagumo oscillators, models for Josephson junctions, and the Hindmarsh-Rose model, we find that tangencies between covariant Lyapunov vectors are a common and maybe generic feature during critical transitions. We further demonstrate that this deviation from hyperbolic dynamics is linked to the occurrence of critical transitions by using it as an indicator variable and evaluating the prediction success through receiver operating characteristic curves. In the presence of noise, we find the alignment of covariant Lyapunov vectors and changes in finite-time Lyapunov exponents to be more successful in announcing critical transitions than common indicator variables as, e.g., finite-time estimates of the variance. Additionally, we propose a new method for estimating approximations of covariant Lyapunov vectors without knowledge of the future trajectory of the system. We find that these approximated covariant Lyapunov vectors can also be applied to predict critical transitions.
关键转变发生在各种动力系统中。在这里,我们采用混沌的量词来识别复杂系统在关键转变之前的动力学结构变化。作为关键转变的合适指示变量,我们考虑了协变 Lyapunov 向量的增长率和方向的变化。通过研究快速-缓慢系统的几个模型中的关键转变,即耦合 FitzHugh-Nagumo 振荡器网络、约瑟夫森结模型和 Hindmarsh-Rose 模型,我们发现协变 Lyapunov 向量之间的切线是关键转变期间的一个常见且可能是通用的特征。我们进一步证明,这种对双曲动力学的偏离与关键转变的发生有关,通过将其作为指示变量,并通过接收器操作特征曲线评估预测的成功程度。在存在噪声的情况下,我们发现协变 Lyapunov 向量的对准和有限时间 Lyapunov 指数的变化在宣布关键转变方面比常用的指示变量(例如,方差的有限时间估计)更为成功。此外,我们提出了一种新的方法来估计协变 Lyapunov 向量的近似值,而无需了解系统的未来轨迹。我们发现这些近似的协变 Lyapunov 向量也可以用于预测关键转变。