Kuehn Christian, Zschaler Gerd, Gross Thilo
Vienna University of Technology, 1040 Vienna, Austria.
TNG Technology Consulting, 85774 Unterföhring, Germany.
Sci Rep. 2015 Aug 21;5:13190. doi: 10.1038/srep13190.
Many real world systems are at risk of undergoing critical transitions, leading to sudden qualitative and sometimes irreversible regime shifts. The development of early warning signals is recognized as a major challenge. Recent progress builds on a mathematical framework in which a real-world system is described by a low-dimensional equation system with a small number of key variables, where the critical transition often corresponds to a bifurcation. Here we show that in high-dimensional systems, containing many variables, we frequently encounter an additional non-bifurcative saddle-type mechanism leading to critical transitions. This generic class of transitions has been missed in the search for early-warnings up to now. In fact, the saddle-type mechanism also applies to low-dimensional systems with saddle-dynamics. Near a saddle a system moves slowly and the state may be perceived as stable over substantial time periods. We develop an early warning sign for the saddle-type transition. We illustrate our results in two network models and epidemiological data. This work thus establishes a connection from critical transitions to networks and an early warning sign for a new type of critical transition. In complex models and big data we anticipate that saddle-transitions will be encountered frequently in the future.
许多现实世界的系统都面临着经历临界转变的风险,这会导致突然的质变,有时还会引发不可逆转的状态转变。早期预警信号的开发被认为是一项重大挑战。最近的进展建立在一个数学框架之上,在这个框架中,一个现实世界的系统由一个具有少量关键变量的低维方程组来描述,其中临界转变通常对应于一个分岔。在这里,我们表明,在包含许多变量的高维系统中,我们经常会遇到一种额外的非分岔鞍型机制,它会导致临界转变。到目前为止,在寻找早期预警的过程中,这类一般的转变一直被忽视。事实上,鞍型机制也适用于具有鞍点动力学的低维系统。在鞍点附近,系统移动缓慢,并且在相当长的时间段内状态可能被视为稳定。我们为鞍型转变开发了一个早期预警信号。我们在两个网络模型和流行病学数据中说明了我们的结果。因此,这项工作建立了从临界转变到网络的联系,并为一种新型的临界转变提供了早期预警信号。在复杂模型和大数据中,我们预计未来会频繁遇到鞍型转变。