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Multi-step-prediction of chaotic time series based on co-evolutionary recurrent neural network 被引量:7

Multi-step-prediction of chaotic time series based on co-evolutionary recurrent neural network
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摘要 This paper proposes a co-evolutionary recurrent neural network (CERNN) for the multi-step-prediction of chaotic time series, it estimates the proper parameters of phase space reconstruction and optimizes the structure of recurrent neural networks by coevolutionary strategy. The searching space was separated into two subspaces and the individuals are trained in a parallel computational procedure. It can dynamically combine the embedding method with the capability of recurrent neural network to incorporate past experience due to internal recurrence. The effectiveness of CERNN is evaluated by using three benchmark chaotic time series data sets: the Lorenz series, Mackey-Glass series and real-world sun spot series. The simulation results show that CERNN improves the performances of multi-step-prediction of chaotic time series. This paper proposes a co-evolutionary recurrent neural network (CERNN) for the multi-step-prediction of chaotic time series, it estimates the proper parameters of phase space reconstruction and optimizes the structure of recurrent neural networks by coevolutionary strategy. The searching space was separated into two subspaces and the individuals are trained in a parallel computational procedure. It can dynamically combine the embedding method with the capability of recurrent neural network to incorporate past experience due to internal recurrence. The effectiveness of CERNN is evaluated by using three benchmark chaotic time series data sets: the Lorenz series, Mackey-Glass series and real-world sun spot series. The simulation results show that CERNN improves the performances of multi-step-prediction of chaotic time series.
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2008年第2期536-542,共7页 中国物理B(英文版)
基金 Project supported by the State Key Program of National Natural Science of China (Grant No 30230350) the Natural Science Foundation of Guangdong Province,China (Grant No 07006474)
关键词 chaotic time series multi-step-prediction co-evolutionary strategy recurrent neural networks chaotic time series, multi-step-prediction, co-evolutionary strategy, recurrent neural networks
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参考文献11

  • 1Inés M. Galván,Pedro Isasi.Multi-step Learning Rule for Recurrent Neural Models: An Application to Time Series Forecasting[J].Neural Processing Letters.2001(2)
  • 2Tan W,Wang Y N,Zhou S W,Liu Z R. Acta Physica Sinica . 2003
  • 3Lorenz E N,Atmos J. Science . 1963
  • 4Zhang J S,Li H C,Xiao X C. Chinese Physics . 2005
  • 5Sun J C,Zhou Y T,Luo J G. Chinese Physics . 2006
  • 6Han M,Xi J H,Xu S G,Yin F L. IEEE Transactions on Signal Processing . 2004
  • 7Meng Q F,Peng Y H,Xue P J. Chinese Physics . 2007
  • 8Zhang J S,and Xiao X C. Chinese Physics . 2000
  • 9Zhang J S,Dang J L,Li H C. Acta Physica Sinica . 2007
  • 10Martin M. Evol.Comput . 1995

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