Artículos de revistas
Automatic estimation of attractor invariants
Fecha
2018-01Registro en:
Restrepo Rinckoar, Juan Felipe; Schlotthauer, Gaston; Automatic estimation of attractor invariants; Springer; Nonlinear Dynamics; 91; 3; 1-2018; 1681-1696
0924-090X
1573-269X
CONICET Digital
CONICET
Autor
Restrepo Rinckoar, Juan Felipe
Schlotthauer, Gaston
Resumen
The invariants of an attractor have been the most used resource to characterize a nonlinear dynamics. Their estimation is a challenging endeavor in short-time series and/or in presence of noise. In this article, we present two new coarse-grained estimators for the correlation dimension and for the correlation entropy. They can be easily estimated from the calculation of two U-correlation integrals. We have also developed an algorithm that is able to automatically obtain these invariants and the noise level in order to process large data sets. This method has been statistically tested through simulations in low-dimensional systems. The results show that it is robust in presence of noise and short data lengths. In comparison with similar approaches, our algorithm outperforms the estimation of the correlation entropy.