检测红色噪声驱动的自然系统中临近的临界转换

IF 11.6 1区 物理与天体物理 Q1 PHYSICS, MULTIDISCIPLINARY Physical Review X Pub Date : 2024-06-04 DOI:10.1103/physrevx.14.021037
Andreas Morr, Niklas Boers
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引用次数: 0

摘要

临界放缓(CSD)检测是从噪声时间序列数据中预测临界转换的主要途径。通常,方差变化和滞后-1 自相关 [AC(1)] 被用作 CSD 指标。然而,这些指标只有在驱动系统的噪声是白色和静止的情况下才能产生可靠的结果。在更现实的时间相关红噪声情况下,噪声相关性的增加(减小)将导致方差和 AC(1) 的虚假(掩蔽)警报。在此,我们提出了两种新方法,可以从驱动噪声特性的可能变化中分辨出真正的 CSD。我们的重点是根据白噪声或红噪声驱动的朗格文型动力学来估计线性恢复率的变化。我们对新估算器预测临界转换的能力进行了评估,结果表明,无论是连续时间模型还是离散时间模型,新估算器的性能都明显优于其他现有方法。除了概念模型,我们还将我们的方法应用于非洲湿润期终止的气候模型模拟。估计结果排除了非平稳噪声特征产生的虚假信号,揭示了非洲气候系统的不稳定性是过去这种气候突变原型的动力机制。
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Detection of Approaching Critical Transitions in Natural Systems Driven by Red Noise
Detection of critical slowing down (CSD) is the dominant avenue for anticipating critical transitions from noisy time-series data. Most commonly, changes in variance and lag-1 autocorrelation [AC(1)] are used as CSD indicators. However, these indicators will only produce reliable results if the noise driving the system is white and stationary. In the more realistic case of time-correlated red noise, increasing (decreasing) the correlation of the noise will lead to spurious (masked) alarms for both variance and AC(1). Here, we propose two new methods that can discriminate true CSD from possible changes in the driving noise characteristics. We focus on estimating changes in the linear restoring rate based on Langevin-type dynamics driven by either white or red noise. We assess the capacity of our new estimators to anticipate critical transitions and show that they perform significantly better than other existing methods both for continuous-time and discrete-time models. In addition to conceptual models, we apply our methods to climate model simulations of the termination of the African Humid Period. The estimations rule out spurious signals stemming from nonstationary noise characteristics and reveal a destabilization of the African climate system as the dynamical mechanism underlying this archetype of abrupt climate change in the past.
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来源期刊
Physical Review X
Physical Review X PHYSICS, MULTIDISCIPLINARY-
CiteScore
24.60
自引率
1.60%
发文量
197
审稿时长
3 months
期刊介绍: Physical Review X (PRX) stands as an exclusively online, fully open-access journal, emphasizing innovation, quality, and enduring impact in the scientific content it disseminates. Devoted to showcasing a curated selection of papers from pure, applied, and interdisciplinary physics, PRX aims to feature work with the potential to shape current and future research while leaving a lasting and profound impact in their respective fields. Encompassing the entire spectrum of physics subject areas, PRX places a special focus on groundbreaking interdisciplinary research with broad-reaching influence.
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