Machine-learning prediction of tipping with applications to the Atlantic Meridional Overturning Circulation
- URL: http://arxiv.org/abs/2402.14877v2
- Date: Thu, 17 Oct 2024 16:22:48 GMT
- Title: Machine-learning prediction of tipping with applications to the Atlantic Meridional Overturning Circulation
- Authors: Shirin Panahi, Ling-Wei Kong, Mohammadamin Moradi, Zheng-Meng Zhai, Bryan Glaz, Mulugeta Haile, Ying-Cheng Lai,
- Abstract summary: We develop a general data-driven and machine-learning approach to predicting potential future tipping in nonautonomous dynamical systems.
As an application, we address the problem of predicting the potential collapse of the Atlantic Meridional Overturning Circulation (AMOC)
Our predictions place a potential collapse window spanning from 2040 to 2065, in consistency with the results in the current literature.
- Score: 0.22436328017044366
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Anticipating a tipping point, a transition from one stable steady state to another, is a problem of broad relevance due to the ubiquity of the phenomenon in diverse fields. The steady-state nature of the dynamics about a tipping point makes its prediction significantly more challenging than predicting other types of critical transitions from oscillatory or chaotic dynamics. Exploiting the benefits of noise, we develop a general data-driven and machine-learning approach to predicting potential future tipping in nonautonomous dynamical systems and validate the framework using examples from different fields. As an application, we address the problem of predicting the potential collapse of the Atlantic Meridional Overturning Circulation (AMOC), possibly driven by climate-induced changes in the freshwater input to the North Atlantic. Our predictions based on synthetic and currently available empirical data place a potential collapse window spanning from 2040 to 2065, in consistency with the results in the current literature.
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