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GEKF,GUKF and GGPF based prediction of chaotic time-series with additive and multiplicative noises

GEKF,GUKF and GGPF based prediction of chaotic time-series with additive and multiplicative noises
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摘要 On the assumption that random interruptions in the observation process are modelled by a sequence of independent Bernoulli random variables, this paper generalize the extended Kalman filtering (EKF), the unscented Kalman filtering (UKF) and the Gaussian particle filtering (GPF) to the case in which there is a positive probability that the observation in each time consists of noise alone and does not contain the chaotic signal (These generalized novel algorithms are referred to as GEKF, GUKF and GGPF correspondingly in this paper). Using weights and network output of neural networks to constitute state equation and observation equation for chaotic time-series prediction to obtain the linear system state transition equation with continuous update scheme in an online fashion, and the prediction results of chaotic time series represented by the predicted observation value, these proposed novel algorithms are applied to the prediction of Mackey-Glass time-series with additive and multiplicative noises. Simulation results prove that the GGPF provides a relatively better prediction performance in comparison with GEKF and GUKF. On the assumption that random interruptions in the observation process are modelled by a sequence of independent Bernoulli random variables, this paper generalize the extended Kalman filtering (EKF), the unscented Kalman filtering (UKF) and the Gaussian particle filtering (GPF) to the case in which there is a positive probability that the observation in each time consists of noise alone and does not contain the chaotic signal (These generalized novel algorithms are referred to as GEKF, GUKF and GGPF correspondingly in this paper). Using weights and network output of neural networks to constitute state equation and observation equation for chaotic time-series prediction to obtain the linear system state transition equation with continuous update scheme in an online fashion, and the prediction results of chaotic time series represented by the predicted observation value, these proposed novel algorithms are applied to the prediction of Mackey-Glass time-series with additive and multiplicative noises. Simulation results prove that the GGPF provides a relatively better prediction performance in comparison with GEKF and GUKF.
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2008年第9期3241-3246,共6页 中国物理B(英文版)
基金 supported by the National Natural Science Foundation of China (Grant No 60774067) the Natural Science Foundation of Fujian Province of China (Grant No 2006J0017)
关键词 additive and multiplicative noises different generalized nonlinear filtering chaotic timeseries prediction neural network approximation additive and multiplicative noises, different generalized nonlinear filtering, chaotic timeseries prediction, neural network approximation
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参考文献25

  • 1Stark J 1993 J. Nonlinear Science 3 197
  • 2Zhang J, Lam K C, Yan W J, Gao H and Li Y 2004 Computers and Electrical Engineering 30 1
  • 3Harpham C and Dawson C W 2006 Neurocomputing 69 2161
  • 4Li J and Liu J H 2005 Acta Phys. Sin 54 4569
  • 5Dudul S V 2005 Applied Soft Computing 5 333
  • 6Ubeyli E D and Guler I 2004 Engineering Applications of Artificial Intelligence 17 567
  • 7Luo J F, Zheng J L and Sun S Y 1999 Chin. J. Radio Science 14 172
  • 8Yu Z H and Cai Y L 2006 Acta Phys. Sin. 55 1659
  • 9Ye M Y and Wang X D 2004 Chin. Phys. 13 454
  • 10Lau K W and Wu Q H 2007 Pattern Recognition in press, corrected proof doi:10.1016/j.patcog.2007.08.013

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