Mukhin Dmitry, Hannachi Abdel, Braun Tobias, Marwan Norbert
Institute of Applied Physics of the Russian Academy of Science, 603950 Nizhny Novgorod, Russia.
Department of Meteorology, Stockholm University, SE-106 91 Stockholm, Sweden.
Chaos. 2022 Nov;32(11):113105. doi: 10.1063/5.0109889.
The low-frequency variability of the extratropical atmosphere involves hemispheric-scale recurring, often persistent, states known as teleconnection patterns or regimes, which can have a profound impact on predictability on intra-seasonal and longer timescales. However, reliable data-driven identification and dynamical representation of such states are still challenging problems in modeling the dynamics of the atmosphere. We present a new method, which allows us both to detect recurring regimes of atmospheric variability and to obtain dynamical variables serving as an embedding for these regimes. The method combines two approaches from nonlinear data analysis: partitioning a network of recurrent states with studying its properties by the recurrence quantification analysis and the kernel principal component analysis. We apply the method to study teleconnection patterns in a quasi-geostrophical model of atmospheric circulation over the extratropical hemisphere as well as to reanalysis data of geopotential height anomalies in the mid-latitudes of the Northern Hemisphere atmosphere in the winter seasons from 1981 to the present. It is shown that the detected regimes as well as the obtained set of dynamical variables explain large-scale weather patterns, which are associated, in particular, with severe winters over Eurasia and North America. The method presented opens prospects for improving empirical modeling and long-term forecasting of large-scale atmospheric circulation regimes.
温带大气的低频变率涉及半球尺度的反复出现、通常持续存在的状态,即遥相关型或模态,这会对季节内及更长时间尺度的可预测性产生深远影响。然而,在对大气动力学进行建模时,通过可靠的数据驱动识别此类状态并进行动力学表示仍是具有挑战性的问题。我们提出了一种新方法,它既能检测大气变率的反复出现模态,又能获得用作这些模态嵌入的动力学变量。该方法结合了非线性数据分析的两种方法:通过递归量化分析和核主成分分析研究其性质来划分递归状态网络。我们将该方法应用于研究温带半球大气环流的准地转模型中的遥相关型,以及1981年至今北半球冬季大气中纬度地区位势高度异常的再分析数据。结果表明,检测到的模态以及获得的动力学变量集解释了大规模天气模式,这些模式尤其与欧亚大陆和北美洲的严冬相关。所提出的方法为改进大规模大气环流模态的经验建模和长期预报开辟了前景。