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Neural Volterra filter for chaotic time series prediction

机译:神经Volterra滤波器用于混沌时间序列预测

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摘要

A new second-order neural Volterra filter (SONVF) with conjugate gradient (CG) algorithm is proposed to predict chaotic time series based on phase space delay-coordinate reconstruction of chaotic dynamics system in this paper, where the neuron activation functions are introduced to constraint Volterra series terms for improving the nonlinear approximation of second-order Volterra filter (SOVF). The SONVF with CG algorithm improves the accuracy of prediction without increasing the computation complexity. Meanwhile, the difficulty of neuron number determination does not exist here. Experimental results show that the proposed filter can predict chaotic time series effectively, and one-step and multi-step prediction performances are obviously superior to those of SOVF, which demonstrate that the proposed SONVF is feasible and effective.
机译:提出了一种新的基于共轭梯度算法的二阶神经Volterra滤波器(SONVF),基于混沌动力学系统的相空间时延-坐标重构,预测混沌时间序列,引入神经元激活函数进行约束。 Volterra级数项,用于改善二阶Volterra滤波器(SOVF)的非线性逼近。带有CG算法的SONVF在不增加计算复杂度的情况下提高了预测的准确性。同时,这里不存在神经元数目确定的困难。实验结果表明,所提出的滤波器能够有效地预测混沌时间序列,单步和多步的预测性能明显优于SOVF,这表明所提出的SONVF是可行和有效的。

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