Using Machine Learning to Replicate Chaotic Attractors and Calculate Lyapunov Exponents from Data
Jaideep Pathak, Zhixin Lu, Brian R. Hunt, Michelle Girvan, Edward Ott

TL;DR
This paper introduces a reservoir computing-based method for model-free estimation of Lyapunov exponents from data, enabling the reproduction of chaotic attractors and their ergodic properties.
Contribution
The paper presents a novel reservoir computing approach to estimate Lyapunov exponents directly from data without explicit models, demonstrated on Lorenz and KS systems.
Findings
Successfully estimated Lyapunov exponents for Lorenz system.
Effectively handled increasing complexity in the KS equation.
Reproduced attractor climate with parameter tuning.
Abstract
We use recent advances in the machine learning area known as 'reservoir computing' to formulate a method for model-free estimation from data of the Lyapunov exponents of a chaotic process. The technique uses a limited time series of measurements as input to a high-dimensional dynamical system called a 'reservoir'. After the reservoir's response to the data is recorded, linear regression is used to learn a large set of parameters, called the 'output weights'. The learned output weights are then used to form a modified autonomous reservoir designed to be capable of producing arbitrarily long time series whose ergodic properties approximate those of the input signal. When successful, we say that the autonomous reservoir reproduces the attractor's 'climate'. Since the reservoir equations and output weights are known, we can compute derivatives needed to determine the Lyapunov exponents of…
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