Title of article :
Prediction of multivariate chaotic time series with local
polynomial fitting
Author/Authors :
Su Li-yun ، نويسنده ,
Issue Information :
دوهفته نامه با شماره پیاپی سال 2010
Abstract :
To improve the prediction accuracy of complex multivariate chaotic time series, a novel
scheme formed on the basis of multivariate local polynomial fitting with the optimal
kernel function is proposed. According to Takens Theorem, a chaotic time series is
reconstructed into vector data, multivariate local polynomial regression is used to fit the
predicted complex chaotic system, then the regression model parameters with the least
squares method based on embedding dimensions are estimated,and the prediction value is
calculated. To evaluate the results, the proposed multivariate chaotic time series predictor
based on multivariate local polynomial model is compared with a univariate predictor with
the same numerical data. The simulation results obtained by the Lorenz system show that
the prediction mean squares error of the multivariate predictor is much smaller than the
univariate one, and is much better than the existing three methods. Even if the last half of
the training data are used in the multivariate predictor, the prediction mean squares error
is smaller than that of the univariate predictor.
Keywords :
Multivariate chaotic time series , Local polynomial fitting , Prediction , Local mean prediction , Local linear prediction , BP neural networks prediction
Journal title :
Computers and Mathematics with Applications
Journal title :
Computers and Mathematics with Applications