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伊辛模型中的相变预测。

Transition prediction in the Ising-model.

机构信息

Institute of Systems Sciences, Innovation and Sustainability Research, University of Graz, Graz, Austria.

出版信息

PLoS One. 2021 Nov 4;16(11):e0259177. doi: 10.1371/journal.pone.0259177. eCollection 2021.

Abstract

Dynamical systems can be subject to critical transitions where a system's state abruptly shifts from one stable equilibrium to another. To a certain extent such transitions can be predicted with a set of methods known as early warning signals. These methods are often developed and tested on systems simulated with equation-based approaches that focus on the aggregate dynamics of a system. Many ecological phenomena however seem to necessitate the consideration of a system's micro-level interactions since only there the actual reasons for sudden state transitions become apparent. Agent-based approaches that simulate systems from the bottom up by explicitly focusing on these micro-level interactions have only rarely been used in such investigations. This study compares the performance of a bifurcation estimation method for predicting state transitions when applied to data from an equation-based and an agent-based version of the Ising-model. The results show that the method can be applied to agent-based models and, despite its greater stochasticity, can provide useful predictions about state changes in complex systems.

摘要

动力系统可能会经历关键转变,在这种转变中,系统的状态会突然从一个稳定的平衡状态转变为另一个平衡状态。在某种程度上,可以使用一组称为早期预警信号的方法来预测这种转变。这些方法通常是在基于方程的方法模拟的系统上开发和测试的,这些方法侧重于系统的总体动态。然而,许多生态现象似乎需要考虑系统的微观相互作用,因为只有在那里,突然状态转变的实际原因才变得明显。基于代理的方法通过明确关注这些微观相互作用,从底层模拟系统,在这种研究中很少被使用。本研究比较了分岔估计方法在应用于基于方程和基于代理的伊辛模型数据时预测状态转变的性能。结果表明,该方法可应用于基于代理的模型,并且尽管其随机性更大,但可以对复杂系统中的状态变化提供有用的预测。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/be9b/8568180/399c5b453bfb/pone.0259177.g001.jpg

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