论文标题
非正态网络中的同步动态:最佳权衡
Synchronization dynamics in non-normal networks: the trade-off for optimality
论文作者
论文摘要
同步是一个重要的行为,其特征是由多个相互作用单元组成的许多天然和人类制造的系统。可以在广泛的应用中找到,从神经科学到动力网络,以提及一些。此类系统由于它们展示的复杂耦合集而同步,后者是由复杂网络建模的。系统的动态行为和基础网络的拓扑结合很强,这引发了使同步鲁棒的最佳体系结构的问题。已经提出并广泛研究了主稳定函数(MSF),作为解决同步问题的通用框架。使用此方法,已经表明,对于一类模型,强烈定向网络中的同步对外部扰动是可靠的。在本文中,我们的方法是将耦合振荡器的非自主系统转变为自主的系统,表明先前的结果是独立的。最近的发现表明,许多现实世界网络都是强有力的,是最佳同步的潜在候选者。在这项工作中,高度定向网络也是强烈非正常的事实的启发,我们通过指出标准技术(例如MSF)可能无法预测同步行为的稳定性,从而解决了非正常的问题。这些结果导致在设计最佳网络时应正确考虑非正常性和定向性之间的权衡,从而增强了同步的鲁棒性。
Synchronization is an important behavior that characterizes many natural and human made systems composed by several interacting units. It can be found in a broad spectrum of applications, ranging from neuroscience to power-grids, to mention a few. Such systems synchronize because of the complex set of coupling they exhibit, the latter being modeled by complex networks. The dynamical behavior of the system and the topology of the underlying network are strongly intertwined, raising the question of the optimal architecture that makes synchronization robust. The Master Stability Function (MSF) has been proposed and extensively studied as a generic framework to tackle synchronization problems. Using this method, it has been shown that for a class of models, synchronization in strongly directed networks is robust to external perturbations. In this paper, our approach is to transform the non-autonomous system of coupled oscillators into an autonomous one, showing that previous results are model-independent. Recent findings indicate that many real-world networks are strongly directed, being potential candidates for optimal synchronization. Inspired by the fact that highly directed networks are also strongly non-normal, in this work, we address the matter of non-normality by pointing out that standard techniques, such as the MSF, may fail in predicting the stability of synchronized behavior. These results lead to a trade-off between non-normality and directedness that should be properly considered when designing an optimal network, enhancing the robustness of synchronization.