A nonlinear prediction model for Chinese speech signal based on RBF neural network

被引:0
|
作者
Xiaohong Gao
机构
[1] Longdong University,School of Electrical Engineering
来源
关键词
Chinese speech signal; Nonlinear theory; Prediction model; Radical basis function neural network;
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暂无
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学科分类号
摘要
A novel method for Chinese speech time series prediction model is proposed. In order to reconstruct the phase space of Chinese speech signal, the delay time and embedding dimension are calculated by C–C method and false nearest neighbor algorithm. The maximum lyapunov exponent and correlation dimension of Chinese speech phoneme are calculated by wolf algorithm and genetic programming algorithm. The numerical results show that there exists nonlinear characteristics in Chinese speech signal. Based on the analysis method of RBF neural network and the nonlinear characteristic parameters such as the delay time and embedding dimension, a nonlinear prediction model is designed. In order to further verify the prediction performance of the designed prediction model, waveform comparison and four evaluation indexes are used. It is shown that compared with the linear prediction model and back propagation neural network nonlinear prediction model, prediction error of the RBF neural network nonlinear prediction model is significantly reduced, and the model has higher prediction accuracy and prediction performance.
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页码:5033 / 5049
页数:16
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