期刊论文详细信息
Frontiers in Physics
Effective precursors for self-organization of complex systems into a critical state based on dynamic series data
Physics
Victor Dmitriev1  Andrey Lebedev1  Andrey Dmitriev2  Vasily Kornilov3 
[1] Big Data and Information Retrieval School, HSE University, Moscow, Russia;Big Data and Information Retrieval School, HSE University, Moscow, Russia;Cybersecurity Research Center, University of Bernardo O’Higgins, Santiago, Chile;Graduate School of Business, HSE University, Moscow, Russia;
关键词: early warning signals;    critical transition;    self-organized criticality;    self-organized bistability;    sandpile cellular automata;    wavelet transform;    phase space reconstruction;    early warning systems;   
DOI  :  10.3389/fphy.2023.1274685
 received in 2023-08-08, accepted in 2023-09-06,  发布年份 2023
来源: Frontiers
PDF
【 摘 要 】

Many different precursors are known, but not all of which are effective, i.e., giving enough time to take preventive measures and with a minimum number of false early warning signals. The study aims to select and study effective early warning measures from a set of measures directly related to critical slowing down as well as to the change in the structure of the reconstructed phase space in the neighborhood of the critical transition point of sand cellular automata. We obtained a dynamical series of the number of unstable nodes in automata with stochastic and deterministic vertex collapse rules, with different topological graph structure and probabilistic distribution law for pumping of automata. For these dynamical series we computed windowed early warning measures. We formulated the notion of an effective measure as the measure that has the smallest number of false signals and the longest early warning time among the set of early warning measures. We found that regardless of the rules, topological structure of graphs, and probabilistic distribution law for pumping of automata, the effective early warning measures are the embedding dimension, correlation dimension, and approximation entropy estimated using the false nearest neighbors algorithm. The variance has the smallest early warning time, and the largest Lyapunov exponent has the greatest number of false early warning signals. Autocorrelation at lag-1 and Welch’s estimate for the scaling exponent of power spectral density cannot be used as early warning measures for critical transitions in the automata. The efficiency definition we introduced can be used to search for and investigate new early warning measures. Embedding dimension, correlation dimension and approximation entropy can be used as effective real-time early warning measures for critical transitions in real-world systems isomorphic to sand cellular automata such as microblogging social network and stock exchange.

【 授权许可】

Unknown   
Copyright © 2023 Dmitriev, Lebedev, Kornilov and Dmitriev.

【 预 览 】
附件列表
Files Size Format View
RO202310125180834ZK.pdf 3457KB PDF download
  文献评价指标  
  下载次数:0次 浏览次数:0次