Supervised machine learning to estimate instabilities in chaotic systems: estimation of local Lyapunov exponents
Daniel Ayers, Jack Lau, Javier Amezcua, Alberto Carrassi, Varun Ojha

TL;DR
This study explores the use of supervised machine learning algorithms to estimate local Lyapunov exponents in chaotic systems, providing a potentially less expensive alternative to traditional computation methods for real-time error growth prediction.
Contribution
It demonstrates that machine learning can accurately estimate local Lyapunov exponents, offering a non-intrusive, computationally efficient approach for analyzing chaotic systems.
Findings
ML algorithms predict stable exponents accurately
Unstable exponents are reasonably predicted
Prediction accuracy correlates with local homogeneity
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 or reduce computation time. One could, e.g., change the ensemble size, or the distribution and type of target observations. Local Lyapunov exponents are known indicators of the rate at which very small prediction errors grow over a finite time interval. However, their computation is very expensive: it requires maintaining and evolving a tangent linear model, orthogonalisation algorithms and storing large matrices. In this feasibility study, we investigate the accuracy of supervised machine learning in estimating the current local Lyapunov exponents, from input of current and recent time steps of the system trajectory, as…
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Taxonomy
TopicsComplex Systems and Time Series Analysis · Chaos control and synchronization · Time Series Analysis and Forecasting
