期刊论文详细信息
Известия высших учебных заведений: Прикладная нелинейная динамика
Optimal data-driven models of forced dynamical systems: General approach and examples from climate
Mukhin, Dmitry Николаевич1  Gavrilov, Andrey Сергеевич1  Seleznev, Aleksei Фёдорович1  Feigin, Aleksandr Markovich1 
[1] Institute of Applied Physics of the Russian Academy of Sciences, ul. Ul'yanova, 46, Nizhny Novgorod , 603950, Russia;
关键词: data-driven models;    random dynamical systems;    inverse modeling;    time series analysis;    climate modeling;   
DOI  :  10.18500/0869-6632-2021-29-4-571-602
来源: DOAJ
【 摘 要 】

Purpose. Purpose of this article is to review recent results (over the past three years) obtained at the Institute of Applied Physics (IAP RAS) relating of applications of the method for constructing optimal empirical models to climatic systems. Methods. This method, developed by the authors of the article, includes the construction of reduced models of the system under study in the form of random dynamical systems. In combination with Bayesian optimization of the model structure, this method allows us to reconstruct statistically justified laws underlying the observed dynamics. Results. The article describes results of applying this method to modeling three climatic subsystems corresponding to different time scales: the Pleistocene climate characterized by glacial cycles, El Nino – Southern Oscillation in the modern climate – a phenomenon with a scale of the order of a year, and the climate of the tropical Pacific Ocean on a centennial scale. Conclusions. Based on the presented results, it can be concluded that the method used for constructing optimal models is a useful tool for verifying the mechanisms underlying the observed climatic variability, e.g., analyzing the response of the system to external signals.

【 授权许可】

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