Eigenvector-based analysis of cluster synchronization in general complex networks of coupled chaotic oscillators

IF 6.5 2区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Frontiers of Physics Pub Date : 2023-07-26 DOI:10.1007/s11467-023-1324-0
Huawei Fan, Ya Wang, Xingang Wang
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Abstract

Whereas topological symmetries have been recognized as crucially important to the exploration of synchronization patterns in complex networks of coupled dynamical oscillators, the identification of the symmetries in large-size complex networks remains as a challenge. Additionally, even though the topological symmetries of a complex network are known, it is still not clear how the system dynamics is transited among different synchronization patterns with respect to the coupling strength of the oscillators. We propose here the framework of eigenvector-based analysis to identify the synchronization patterns in the general complex networks and, incorporating the conventional method of eigenvalue-based analysis, investigate the emergence and transition of the cluster synchronization states. We are able to argue and demonstrate that, without a prior knowledge of the network symmetries, the method is able to predict not only all the cluster synchronization states observable in the network, but also the critical couplings where the states become stable and the sequence of these states in the process of synchronization transition. The efficacy and generality of the proposed method are verified by different network models of coupled chaotic oscillators, including artificial networks of perfect symmetries and empirical networks of non-perfect symmetries. The new framework paves a way to the investigation of synchronization patterns in large-size, general complex networks.

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基于特征向量的耦合混沌振子复杂网络簇同步分析
尽管拓扑对称性已经被认为对耦合动态振荡器复杂网络中同步模式的探索至关重要,但在大型复杂网络中识别对称性仍然是一个挑战。此外,尽管已知复杂网络的拓扑对称性,但仍不清楚系统动力学如何在不同的同步模式之间与振荡器的耦合强度有关。本文提出了基于特征向量的分析框架来识别一般复杂网络中的同步模式,并结合传统的基于特征值的分析方法来研究集群同步状态的产生和转变。我们能够论证并证明,在没有网络对称性先验知识的情况下,该方法不仅能够预测网络中所有可观察到的集群同步状态,而且能够预测状态变得稳定的临界耦合以及这些状态在同步过渡过程中的顺序。通过不同的耦合混沌振子网络模型,包括完全对称的人工网络和非完全对称的经验网络,验证了所提方法的有效性和通用性。新的框架为研究大规模、一般复杂网络中的同步模式铺平了道路。
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来源期刊
Frontiers of Physics
Frontiers of Physics PHYSICS, MULTIDISCIPLINARY-
CiteScore
9.20
自引率
9.30%
发文量
898
审稿时长
6-12 weeks
期刊介绍: Frontiers of Physics is an international peer-reviewed journal dedicated to showcasing the latest advancements and significant progress in various research areas within the field of physics. The journal's scope is broad, covering a range of topics that include: Quantum computation and quantum information Atomic, molecular, and optical physics Condensed matter physics, material sciences, and interdisciplinary research Particle, nuclear physics, astrophysics, and cosmology The journal's mission is to highlight frontier achievements, hot topics, and cross-disciplinary points in physics, facilitating communication and idea exchange among physicists both in China and internationally. It serves as a platform for researchers to share their findings and insights, fostering collaboration and innovation across different areas of physics.
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