ANN bandpass filters for electro-optical implementation

M. E. Ulug
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引用次数: 4

Abstract

The design and simulation of a bandpass filter are described, and an electro-optical implementation is proposed. The neural network used in this filter has an architecture similar to the one suggested by Kolmogorov's existence theorem and a data processing method based on Fourier series. The resulting system, called the orthonormal neural network, can approximate any L/sub 2/ mapping function between the input and output vectors without using the backpropagation rule or hidden layers. Because the transfer functions of the middle nodes are the terms of the Fourier series, the synaptic link values between the middle and output layers represent the frequency spectrum of the signals of the output nodes. As a result, by autoassociatively training the network with all the middle nodes and testing it with certain selected ones, it is easy to build a nonlinear bandpass filter. The system is basically a two-layer network consisting of virtual input nodes and output nodes. The transfer functions of the output nodes are linear. As a result, the network is free from the problems of local minima and has a bowl-shaped error surface. The sharp slopes of this surface make the system tolerant to loss of computational accuracy and suitable for electro-optical implementation.<>
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用于光电实现的人工神经网络带通滤波器
介绍了一种带通滤波器的设计与仿真,并提出了一种光电实现方案。该滤波器采用的神经网络结构类似于柯尔莫哥洛夫存在性定理,采用基于傅立叶级数的数据处理方法。由此产生的系统称为标准正交神经网络,可以在不使用反向传播规则或隐藏层的情况下近似输入和输出向量之间的任何L/sub 2/映射函数。因为中间节点的传递函数是傅里叶级数的项,所以中间层和输出层之间的突触链接值代表了输出节点信号的频谱。因此,通过对所有中间节点进行自动关联训练,并用选定的中间节点进行测试,可以很容易地构建非线性带通滤波器。该系统基本上是一个由虚拟输入节点和虚拟输出节点组成的双层网络。输出节点的传递函数是线性的。因此,该网络不存在局部极小值问题,具有碗形误差面。该表面的陡坡使系统能够承受计算精度的损失,适合于光电实现。
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