Nonlinear Sciences – Chaotic Dynamics
Scientific paper
Oct 2005
adsabs.harvard.edu/cgi-bin/nph-data_query?bibcode=2005phrve..72d6218c&link_type=abstract
Physical Review E, vol. 72, Issue 4, id. 046218
Nonlinear Sciences
Chaotic Dynamics
11
Synchronization, Coupled Oscillators, Chaotic Dynamics, Neural Networks
Scientific paper
Predictability of chaotic systems is limited, in addition to the precision of the knowledge of the initial conditions, by the error of the models used to extract the nonlinear dynamics from the time series. In this paper, we analyze the predictions obtained from the anticipated synchronization scheme using a chain of slave neural network approximate replicas of the master system. We compare the maximum prediction horizons obtained with those attainable using standard prediction techniques.
Ciszak Marzena
Cofino A. S.
Gutiérrez Joaquín M.
Mirasso Claudio
Ortín S.
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