2023
DOI: 10.1002/qj.4450
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Supervised machine learning to estimate instabilities in chaotic systems: Estimation of local Lyapunov exponents

Abstract: In chaotic dynamical systems such as the weather, prediction errors grow faster in some situations than in others. Real‐time knowledge about the error growth could enable strategies to adjust the modelling and forecasting infrastructure on the fly to increase accuracy and/or reduce computation time. For example, one could change the ensemble size, the distribution and type of target observations, and so forth. Local Lyapunov exponents are known indicators of the rate at which very small prediction errors grow … Show more

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Cited by 3 publications
(1 citation statement)
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“…We quantify the sensitivity of the system to initial conditions by exploring its Lyapunov spectrum. We use the Benettin algorithm (Benettin et al, 1980), as described by Ayers et al (2023), to compute the Lyapunov exponents (LEs) and the first backward Lyapunov vector (LV1).…”
Section: Parameters Influence On Energy Time-scale Separation and Cro...mentioning
confidence: 99%
“…We quantify the sensitivity of the system to initial conditions by exploring its Lyapunov spectrum. We use the Benettin algorithm (Benettin et al, 1980), as described by Ayers et al (2023), to compute the Lyapunov exponents (LEs) and the first backward Lyapunov vector (LV1).…”
Section: Parameters Influence On Energy Time-scale Separation and Cro...mentioning
confidence: 99%