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New prediction of chaotic time series based on local Lyapunov exponent 被引量:9

New prediction of chaotic time series based on local Lyapunov exponent
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摘要 A new method of predicting chaotic time series is presented based on a local Lyapunov exponent, by quantitatively measuring the exponential rate of separation or attraction of two infinitely close trajectories in state space. After recon- structing state space from one-dimensional chaotic time series, neighboring multiple-state vectors of the predicting point are selected to deduce the prediction formula by using the definition of the locaI Lyapunov exponent. Numerical simulations are carded out to test its effectiveness and verify its higher precision over two older methods. The effects of the number of referential state vectors and added noise on forecasting accuracy are also studied numerically. A new method of predicting chaotic time series is presented based on a local Lyapunov exponent, by quantitatively measuring the exponential rate of separation or attraction of two infinitely close trajectories in state space. After recon- structing state space from one-dimensional chaotic time series, neighboring multiple-state vectors of the predicting point are selected to deduce the prediction formula by using the definition of the locaI Lyapunov exponent. Numerical simulations are carded out to test its effectiveness and verify its higher precision over two older methods. The effects of the number of referential state vectors and added noise on forecasting accuracy are also studied numerically.
作者 张勇
出处 《Chinese Physics B》 SCIE EI CAS CSCD 2013年第5期191-197,共7页 中国物理B(英文版)
基金 Project supported by the National Natural Science Foundation of China (Grant No. 61201452)
关键词 chaotic time series prediction of chaotic time series local Lyapunov exponent least squaresmethod chaotic time series, prediction of chaotic time series, local Lyapunov exponent, least squaresmethod
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