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Extracting unstable periodic orbits from chaotic time series data #105

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Datseris opened this issue Feb 26, 2020 · 0 comments
Open

Extracting unstable periodic orbits from chaotic time series data #105

Datseris opened this issue Feb 26, 2020 · 0 comments
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@Datseris
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Datseris commented Feb 26, 2020

see https://journals.aps.org/pre/abstract/10.1103/PhysRevE.55.5398

Abstract

A general nonlinear method to extract unstable periodic orbits from chaotic time series is proposed. By utilizing the estimated local dynamics along a trajectory, we devise a transformation of the time series data such that the transformed data are concentrated on the periodic orbits. Thus, one can extract unstable periodic orbits from a chaotic time series by simply looking for peaks in a finite grid approximation of the distribution function of the transformed data. Our method is demonstrated using data from both numerical and experimental examples, including neuronal ensemble data from mammalian brain slices. The statistical significance of the results in the presence of noise is assessed using surrogate data.


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@Datseris Datseris added help wanted wanted feature We really want this! labels Feb 26, 2020
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