Forecast of Chaotic Series in a Horizon Superior to the Inverse of the Maximum Lyapunov Exponent

Author:

Alfaro Miguel1,Fuertes Guillermo23ORCID,Vargas Manuel4ORCID,Sepúlveda Juan1,Veloso-Poblete Matias1

Affiliation:

1. Industrial Engineering Department, University of Santiago de Chile, Avenida Ecuador 3769, Santiago de Chile, Chile

2. Universidad de San Buenaventura, Colombia

3. Facultad de Ingeniería, Ciencia y Tecnología, Universidad Bernardo O’Higgins, Avenida Viel 1497, Ruta 5 Sur, Santiago de Chile, Chile

4. Facultad de Ingeniería y Tecnología, Universidad San Sebastian, Bellavista 7, Santiago de Chile, Chile

Abstract

In this article, two models of the forecast of time series obtained from the chaotic dynamic systems are presented: the Lorenz system, the manufacture system, and the volume of the Great Salt Lake of Utah. The theory of the nonlinear dynamic systems indicates the capacity of making good-quality predictions of series coming from dynamic systems with chaotic behavior up to a temporal horizon determined by the inverse of the major Lyapunov exponent. The analysis of the Fourier power spectrum and the calculation of the maximum Lyapunov exponent allow confirming the origin of the series from a chaotic dynamic system. The delay time and the global dimension are employed as parameters in the models of forecast of artificial neuronal networks (ANN) and support vector machine (SVM). This research demonstrates how forecast models built with ANN and SVM have the capacity of making forecasts of good quality, in a superior temporal horizon at the determined interval by the inverse of the maximum Lyapunov exponent or theoretical forecast frontier before deteriorating exponentially.

Funder

Universidad de Santiago de Chile

Publisher

Hindawi Limited

Subject

Multidisciplinary,General Computer Science

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