PREDICTING CHAOTIC TIME SERIES WITH IMPROVED LOCAL APPROXIMATIONS

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MU Xiaowu LIN Lan ZHOU Xiangdong Department of Mathematics Zhengzhou University Zhengzhou China School of Electronics and Information Engineering Tongji University Shanghai China Department of Computing and Information Technology Fudan University Shanghai China [1 ,450052 ,2 ,200092 ,3 ,200433 ]
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O415.5 [混沌理论];
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<正> In this paper, new approaches for chaotic time series prediction are introduced. We first summarize and evaluate the existing local prediction models, then propose optimization models and new algorithms to modify procedures of local approximations. The modification to the choice of sample sets is given, and the zeroth-order approximation is improved by a linear programming method. Four procedures of first-order approximation are compared, and corresponding modified methods are given. Lastly, the idea of nonlinear feedback to raise predicting accuracy is put forward. In the end, we discuss two important examples, i.e. Lorenz system and Rossler system, and the simulation experiments indicate that the modified algorithms are effective.
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页码:207 / 219
页数:13
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