郑会永, 肖田元, 韩向利, 刘华强, 戴冠中. 语音动力学系统的神经网络建模方法研究[J]. 信息与控制, 1999, 28(2): 107-110.
引用本文: 郑会永, 肖田元, 韩向利, 刘华强, 戴冠中. 语音动力学系统的神经网络建模方法研究[J]. 信息与控制, 1999, 28(2): 107-110.
ZHENG Huiyong, XIAO Tianyuan, HAN Xiangli, LIU Huaqiang, DAI Guanzhong. RESEARCH ON MODELLING VOICE NON-LINEAR DYNAMIC SYSTEMS[J]. INFORMATION AND CONTROL, 1999, 28(2): 107-110.
Citation: ZHENG Huiyong, XIAO Tianyuan, HAN Xiangli, LIU Huaqiang, DAI Guanzhong. RESEARCH ON MODELLING VOICE NON-LINEAR DYNAMIC SYSTEMS[J]. INFORMATION AND CONTROL, 1999, 28(2): 107-110.

语音动力学系统的神经网络建模方法研究

RESEARCH ON MODELLING VOICE NON-LINEAR DYNAMIC SYSTEMS

  • 摘要: 人工神经网络(ANN)方法是非线性动力学系统建模的有效方法.本文针对多层ANN结构,运用递推预报误差(RPE)算法对离散非线性动力学系统进行了建模研究,并将之运用于语音非线性动力学系统的动态建模,估计出了语音非线性动力学系统稳态吸引子的维数,为了解语音和实用化的语音识别提供了良好的基础.

     

    Abstract: This paper presents, the use of recursive prediction error algorithm(RPE) of training multilayered artificial neural neural(ANN) networks in discrete time non-linear dynamic system identification. As an example, the nonlinear voice dynamic system is modelled based on RPE algorithm. The results provide a good foundation to understand and identify voice model.

     

/

返回文章
返回