The State Space Reconstruction that integrates a
non-linear time series is the first and important step in characterising and
predicting the behaviour of a complex system in scientific research. This
includes the selection of the necessary time delay T and embedded dimension dE
values. Three methods are implemented and explored by the Rössler attractor
equations set on nonlinear time series: the Cao method, the C-C method
developed by Kim et al., and the C-C-1 method developed by Cai et al. A way is
provided to fix a parameter that is needed to enforce the last process. Small
size and/or noisy time series have been put into view. By using a metric based
on the smoothness of the transformation, the reconstruction quality is
measured. This paper offers an overview of embedding parameter methods for
optimal selection applied by chaotic time series to the Rössler strange
attractor reconstruction.
Author(s) Details
Olivier Delage
Department of
Physics, The University of La Reunion, Saint Denis, France.
Alain Bourdier
Department of Physics and Astronomy, The University of New Mexico, Albuquerque,
NM, USA.
View Book :- https://bp.bookpi.org/index.php/bpi/catalog/book/301
Thursday, 5 November 2020
Critical Research: Selection of Optimal Embedding Parameters Applied to Short and Noisy Time Series from Rössler System
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