1. Fourier phase index for extracting signatures of determinism and nonlinear features in time series.
- Author
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Aguilar-Hernández AI, Serrano-Solis DM, Ríos-Herrera WA, Zapata-Berruecos JF, Vilaclara G, Martínez-Mekler G, and Müller MF
- Abstract
Detecting determinism and nonlinear properties from empirical time series is highly nontrivial. Traditionally, nonlinear time series analysis is based on an error-prone phase space reconstruction that is only applicable for stationary, largely noise-free data from a low-dimensional system and requires the nontrivial adjustment of various parameters. We present a data-driven index based on Fourier phases that detects determinism at a well-defined significance level, without using Fourier transform surrogate data. It extracts nonlinear features, is robust to noise, provides time-frequency resolution by a double running window approach, and potentially distinguishes regular and chaotic dynamics. We test this method on data derived from dynamical models as well as on real-world data, namely, intracranial recordings of an epileptic patient and a series of density related variations of sediments of a paleolake in Tlaxcala, Mexico., (© 2024 Author(s). Published under an exclusive license by AIP Publishing.)
- Published
- 2024
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