复杂网络的动态稳定性

B. Barzel, C. Meena, C. Hens, Simi Haber, Boccaletti Stefano
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引用次数: 1

摘要

一个大型复杂系统会稳定吗?这个问题最初是由May在1972年提出的,它抓住了一个长期存在的挑战,而理论与实践之间似乎存在矛盾。虽然经验现实给出了令人震惊的肯定答案,但基于线性稳定性理论的数学分析似乎给出了相反的结论——因此,出现了多样性-稳定性悖论。在这里,我们通过考虑拓扑和动力学之间的相互作用来解决这种二分法。我们表明,这种相互作用导致系统稳定性矩阵中出现非随机模式,导致我们放弃流行的基于随机矩阵的范式。相反,我们提供了一个新的矩阵集合,它捕获了现实世界系统的动态稳定性。这个集合帮助我们分析地确定预测系统稳定性的相关控制参数,揭示了三个广泛的动态类:在渐近不稳定类中,多样性确实导致了la May悖论的不稳定性。然而,我们也揭示了一个渐近稳定的类,大多数真实系统都存在于这个类中,在这个类中,多样性不仅不禁止,而且实际上增强了动态稳定性。最后,在敏感稳定的类中,多样性不起作用,因此稳定性是由系统的微观参数驱动的。总之,我们的理论揭示了复杂系统稳定性自然出现的规律,帮助我们解决了困扰我们几十年的悖论。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dynamic stability of complex networks
Will a large complex system be stable? This question, first posed by May in 1972, captures a long standing challenge, fueled by a seeming contradiction between theory and practice. While empirical reality answers with an astounding yes, the mathematical analysis, based on linear stability theory, seems to suggest the contrary - hence, the diversity-stability paradox. Here we settle this dichotomy, by considering the interplay between topology and dynamics. We show that this interplay leads to the emergence of non-random patterns in the system's stability matrix, leading us to relinquish the prevailing random matrix-based paradigm. Instead, we offer a new matrix ensemble, which captures the dynamic stability of real-world systems. This ensemble helps us analytically identify the relevant control parameters that predict a system's stability, exposing three broad dynamic classes: In the asymptotically unstable class, diversity, indeed, leads to instability a la May's paradox. However, we also expose an asymptotically stable class, the class in which most real systems reside, in which diversity not only does not prohibit, but, in fact, enhances dynamic stability. Finally, in the sensitively stable class diversity plays no role, and hence stability is driven by the system's microscopic parameters. Together, our theory uncovers the naturally emerging rules of complex system stability, helping us reconcile the paradox that has eluded us for decades.
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