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Nonlinear time series models for the North Atlantic Oscillation

机译:北大西洋振荡的非线性时间序列模型

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The North Atlantic Oscillation (NAO) is the dominant mode of climate variability over the North Atlantic basin and has a significant impact on seasonal climate and surface weather conditions. This is the result of complex and nonlinear interactions between many spatio-temporal scales. Here, the authors study a number of linear and nonlinear models for a station-based time series of the daily winter NAO index. It is found that nonlinear autoregressive models, including both short and long lags, perform excellently in reproducing the characteristic statistical properties of the NAO, such as skewness and fat tails of the distribution, and the different timescales of the two phases. As a spin-off of the modelling procedure, we can deduce that the interannual dependence of the NAO mostly affects the positive phase, and that timescales of 1 to 3?weeks are more dominant for the negative phase. Furthermore, the statistical properties of the model make it useful for the generation of realistic climate noise.
机译:北大西洋振荡(NAO)是北大西洋盆地的气候变异性的主导方式,对季节性气候和地面天气条件产生重大影响。这是许多时空尺度之间复杂和非线性相互作用的结果。在这里,作者研究了许多用于日常冬季Nao指数的基于站的时间序列的线性和非线性模型。发现非线性自回归模型,包括短期和长滞后,在再现NAO的特征统计特性方面表现出色,例如分布的偏斜和脂肪尾,以及两相的不同时间尺寸。作为建模程序的旋转,我们可以推断Nao的续依赖性主要影响正阶段,并且1至3个周的时间表对于负阶段更大。此外,模型的统计特性使其可用于产生现实气候噪声。

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