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A closed form for Jacobian reconstruction from time series and its application as an early warning signal in network dynamics
Author(s) -
Edmund Barter,
Andreas Brechtel,
Barbara Drossel,
Thilo Groß
Publication year - 2021
Publication title -
proceedings of the royal society a mathematical physical and engineering sciences
Language(s) - English
Resource type - Journals
eISSN - 1471-2946
pISSN - 1364-5021
DOI - 10.1098/rspa.2020.0742
Subject(s) - jacobian matrix and determinant , eigenvalues and eigenvectors , signal (programming language) , nonlinear system , computer science , computation , series (stratigraphy) , dynamical systems theory , matrix (chemical analysis) , noise (video) , control theory (sociology) , mathematics , algorithm , artificial intelligence , physics , paleontology , materials science , image (mathematics) , control (management) , quantum mechanics , composite material , biology , programming language
The Jacobian matrix of a dynamical system describes its response to perturbations. Conversely, one can estimate the Jacobian matrix by carefully monitoring how the system responds to environmental noise. We present a closed-form analytical solution for the calculation of a system’s Jacobian from a time series. Being able to access the Jacobian enables a broad range of mathematical analyses by which deeper insights into the system can be gained. Here we consider in particular the computation of the leading Jacobian eigenvalue as an early warning signal for critical transitions. To illustrate this approach, we apply it to ecological meta-foodweb models, which are strongly nonlinear dynamical multi-layer networks. Our analysis shows that accurate results can be obtained, although the data demand of the method is still high.

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