气候中的耦合功能。

Woosok Moon, John S Wettlaufer
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引用次数: 0

摘要

我们研究了动力学系统理论中的耦合函数如何为气候动力学提供一个定量窗口。此前,我们已经证明,一维周期性非自治随机动力系统可以模拟地表气温数据的月度统计。在这里,我们将这种方法扩展到二维动力系统,以包括气候的两个子系统之间的相互作用。相关耦合函数由两个子系统数据的协方差构建。我们在两个热带气候指数--厄尔尼诺-南方涛动(ENSO)和印度洋偶极子(IOD)上演示了该方法,以解释太平洋和印度洋中这两种海气相互作用现象之间的相互影响。耦合函数显示,厄尔尼诺/南方涛动在其成熟阶段主要控制着印度洋偶极子的季节变化。这表明基于这种耦合函数构建气候系统季节变率网络模式是可行的。这篇文章是 "耦合函数:物理、生物和社会科学中的动态相互作用机制 "专题的一部分。
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Coupling functions in climate.

We examine how coupling functions in the theory of dynamical systems provide a quantitative window into climate dynamics. Previously, we have shown that a one-dimensional periodic non-autonomous stochastic dynamical system can simulate the monthly statistics of surface air temperature data. Here, we expand this approach to two-dimensional dynamical systems to include interactions between two sub-systems of the climate. The relevant coupling functions are constructed from the covariance of the data from the two sub-systems. We demonstrate the method on two tropical climate indices, the El-Niño-Southern Oscillation (ENSO) and the Indian Ocean Dipole (IOD), to interpret the mutual interactions between these two air-sea interaction phenomena in the Pacific and Indian Oceans. The coupling function reveals that the ENSO mainly controls the seasonal variability of the IOD during its mature phase. This demonstrates the plausibility of constructing a network model for the seasonal variability of climate systems based on such coupling functions. This article is part of the theme issue 'Coupling functions: dynamical interaction mechanisms in the physical, biological and social sciences'.

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