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Identifying early-warning signals of critical transitions with strong noise by dynamical network markers

机译:通过动态网络标记识别带有强烈噪声的关键过渡的预警信号

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摘要

Identifying early-warning signals of a critical transition for a complex system is difficult, especially when the target system is constantly perturbed by big noise, which makes the traditional methods fail due to the strong fluctuations of the observed data. In this work, we show that the critical transition is not traditional state-transition but probability distribution-transition when the noise is not sufficiently small, which, however, is a ubiquitous case in real systems. We present a model-free computational method to detect the warning signals before such transitions. The key idea behind is a strategy: “making big noise smaller” by a distribution-embedding scheme, which transforms the data from the observed state-variables with big noise to their distribution-variables with small noise, and thus makes the traditional criteria effective because of the significantly reduced fluctuations. Specifically, increasing the dimension of the observed data by moment expansion that changes the system from state-dynamics to probability distribution-dynamics, we derive new data in a higher-dimensional space but with much smaller noise. Then, we develop a criterion based on the dynamical network marker (DNM) to signal the impending critical transition using the transformed higher-dimensional data. We also demonstrate the effectiveness of our method in biological, ecological and financial systems.
机译:识别复杂系统关键转换的预警信号非常困难,尤其是当目标系统不断受到大噪声干扰时,这使得传统方法由于观测数据的强烈波动而失败。在这项工作中,我们证明了临界过渡不是传统的状态过渡,而是当噪声不够小时的概率分布过渡,但是,这在实际系统中无处不在。我们提出了一种无模型的计算方法来在此类转变之前检测警告信号。背后的关键思想是一种策略:通过分布嵌入方案“使大噪声变小”,该方案将数据从观察到的具有大噪声的状态变量转换为具有小噪声的分布变量,从而使传统标准有效因为大幅减少了波动。具体而言,通过将系统从状态动力学更改为概率分布动力学的矩扩展来增加观测数据的尺寸,我们可以在高维空间中获得新数据,但噪声要小得多。然后,我们开发基于动态网络标记(DNM)的标准,以使用转换后的高维数据来表示即将发生的关键过渡。我们还证明了我们的方法在生物,生态和金融系统中的有效性。

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