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Noisy chaotic time series forecast approximated by combining Reny's entropy with energy associated to series method: Application to rainfall series

Authors :
Leonardo Franco
Alvaro D. Orjuela-Cañón
Sergio Laboret
Victor Sauchelli
Julian Pucheta
Cristian Rodriguez Rivero
Source :
2016 IEEE Latin American Conference on Computational Intelligence (LA-CCI).
Publication Year :
2016
Publisher :
IEEE, 2016.

Abstract

This paper propose that the combination of smoothing approach taking into account the entropic information provided by Renyi' method, has an acceptable performance in term of forecasting errors. The methodology of the proposed scheme is examined through benchmark chaotic time series, such as Mackay Glass, Lorenz, Henon maps, the Lynx and rainfall from Santa Francisca series, with addition of white noise by using neural networks-based energy associated (EAS) predictor filter modified by Renyi entropy of the series. In particular, when the time series is short or long, the underlying dynamical system is nonlinear and temporal dependencies span long time intervals, in which this are also called long memory process. In such cases, the inherent nonlinearity of neural networks models and a higher robustness to noise seem to partially explain their better prediction performance when entropic information is extracted from the series. Then, to demonstrate that permutation entropy is computationally efficient, robust to outliers, and effective to measure complexity of time series, computational results are evaluated against several non-linear ANN predictors proposed before to show the predictability of noisy rainfall and chaotic time series reported in the literature.

Details

Database :
OpenAIRE
Journal :
2016 IEEE Latin American Conference on Computational Intelligence (LA-CCI)
Accession number :
edsair.doi...........144bead6901de616dbcc9f7d1c860888
Full Text :
https://doi.org/10.1109/la-cci.2016.7885702