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    许少华, 何新贵, 王 兵. 一种分式过程神经元网络及其应用研究[J]. 计算机研究与发展, 2006, 43(12): 2088-2095.
    引用本文: 许少华, 何新贵, 王 兵. 一种分式过程神经元网络及其应用研究[J]. 计算机研究与发展, 2006, 43(12): 2088-2095.
    Xu Shaohua, He Xingui, Wang Bing. A Structural Formula Process Neural Networks and Its Applications[J]. Journal of Computer Research and Development, 2006, 43(12): 2088-2095.
    Citation: Xu Shaohua, He Xingui, Wang Bing. A Structural Formula Process Neural Networks and Its Applications[J]. Journal of Computer Research and Development, 2006, 43(12): 2088-2095.

    一种分式过程神经元网络及其应用研究

    A Structural Formula Process Neural Networks and Its Applications

    • 摘要: 针对带有奇异值复杂时变信号的模式分类和系统建模问题,提出了一种分式过程神经元网络.该模型是基于有理式函数具有的对复杂过程信号的逼近性质和过程神经元网络对时变信息的非线性变换机制构建的,其基本信息处理单元由两个过程神经元成对偶组成,逻辑上构成一个分式过程神经元,是人工神经网络在结构和信息处理机制上的一种扩展.分析了分式过程神经元网络的连续性和泛函数逼近能力,给出了基于函数正交基展开的学习算法.实验结果表明,分式过程神经元网络对于带有奇异值时变函数样本的学习性质和泛化性质要优于BP网络和一般过程神经元网络,网络隐层数和节点数可较大减少,且算法的学习性质与传统BP算法相同.

       

      Abstract: Aimed at the pattern classification and the system-modelling problem with complex time-varying signals that have singular values, a kind of structural formula process neural networks is proposed in this paper. This model is constructed based on the rational expression function's approximation character to complex process signals and the process neural networks' nonlinear transforming mechanism to time-varying information; its basic information processing unit is made up of two process neurons, logically constructing a structural process neuron. It is a type of extending for artificial neural networks at the architecture and the information processing mechanism. In this paper the continuity and functional approximation ability of structural formula process neural networks are analyzed, and the learning algorithm based on the function orthogonal expanded by bases is given. The experimental results demonstrate that the learning and the generalization character of structural formula process neural networks for the time-varying function samples with singular values are better than that of BP networks and the general process neural networks. The numbers of hidden layer and node numbers are greatly decreased, and the learning characters of the algorithm are the same with BP algorithm's.

       

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