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Journal ArticleDOI

Practical implementation of nonlinear time series methods: The TISEAN package

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TLDR
A variety of algorithms for data representation, prediction, noise reduction, dimension and Lyapunov estimation, and nonlinearity testing are discussed with particular emphasis on issues of implementation and choice of parameters.
Abstract
Nonlinear time series analysis is becoming a more and more reliable tool for the study of complicated dynamics from measurements. The concept of low-dimensional chaos has proven to be fruitful in the understanding of many complex phenomena despite the fact that very few natural systems have actually been found to be low dimensional deterministic in the sense of the theory. In order to evaluate the long term usefulness of the nonlinear time series approach as inspired by chaos theory, it will be important that the corresponding methods become more widely accessible. This paper, while not a proper review on nonlinear time series analysis, tries to make a contribution to this process by describing the actual implementation of the algorithms, and their proper usage. Most of the methods require the choice of certain parameters for each specific time series application. We will try to give guidance in this respect. The scope and selection of topics in this article, as well as the implementational choices that have been made, correspond to the contents of the software package TISEAN which is publicly available from this http URL . In fact, this paper can be seen as an extended manual for the TISEAN programs. It fills the gap between the technical documentation and the existing literature, providing the necessary entry points for a more thorough study of the theoretical background.

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Intelligent Soft Computing Models in Water Demand Forecasting

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Nonlinearities in mating sounds of American crocodiles.

TL;DR: The phase space from the sound recording reveals that the attractor needs no less than five degrees of freedom to fully evolve in the embedding space, which suggests that a rather complex nonlinear dynamics underlies its existence.
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Synchronization of chaotic artificial neurons and its application to secure image transmission under MQTT for IoT protocol

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Intercellular calcium signalling in cultured renal epithelia: a theoretical study of synchronization mode and pacemaker activity

TL;DR: The present study shows that the frequency of synchronized oscillations is not dictated by one or few fast-responding cells, and the collective frequency is the result of a two-way communication between the phase-advanced pacemaker and its environment.

Forecasting Exchange Rates: A Chaos-Based Regression Approach. Intelligent Approach.

TL;DR: In this article, the authors proposed an improved model for forecasting exchange rates based on chaos theory that involves phase space reconstruction from the observed time series and the use of support vector regression SVR for forecasting.
References
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Numerical recipes

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Measuring the Strangeness of Strange Attractors

TL;DR: In this paper, the correlation exponent v is introduced as a characteristic measure of strange attractors which allows one to distinguish between deterministic chaos and random noise, and algorithms for extracting v from the time series of a single variable are proposed.
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Ergodic theory of chaos and strange attractors

TL;DR: A review of the main mathematical ideas and their concrete implementation in analyzing experiments can be found in this paper, where the main subjects are the theory of dimensions (number of excited degrees of freedom), entropy (production of information), and characteristic exponents (describing sensitivity to initial conditions).
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Independent coordinates for strange attractors from mutual information.

TL;DR: In this paper, the mutual information I is examined for a model dynamical system and for chaotic data from an experiment on the Belousov-Zhabotinskii reaction.