2003, Vol.6, No.4, pp.842-851
The problem of embedding dimension
estimation from chaotic time series based on polynomial models is
considered. The optimality of embedding dimension has an important role in
computational efforts, Lyapunov exponents analysis, and efficiency of
prediction. The method of this paper is based on the fact that the
reconstructed dynamics of an attractor should be a smooth map, i.e. with no
self intersection in the reconstructed attractor. To check this property, a
local general polynomial autoregressive model is fitted to the given data
and a canonical state space realization is considered. Then, the normalized
one step ahead prediction error for different orders and various degrees of
nonlinearity in polynomials is evaluated. This procedure is also extended to
a multivariate form to include information from other time series and
resolve the shortcomings of the univariate case. Besides the estimation of
the embedding dimension, a predictive model is obtained which can be used
for prediction and estimation of the Lyapunov exponents. To show the
effectiveness of the proposed method, simulation results are provided which
present its application to some well-known chaotic benchmark systems.
Key words:
chaotic uni/multivariate time series, state space
reconstruction, embedding dimension, polynomial models
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