Title :
ANN bandpass filters for electro-optical implementation
Author_Institution :
Intelligent Neurons Inc., Deerfield Beach, FL, USA
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 L2 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
Keywords :
band-pass filters; neural nets; transfer functions; ANN bandpass filters; Fourier series; Kolmogorov´s existence theorem; L2 mapping function; autoassociative training; bandpass filter; bowl-shaped error surface; computational accuracy; electro-optical implementation; frequency spectrum; nonlinear bandpass filter; orthonormal neural network; output nodes; synaptic link values; transfer functions; two-layer network; virtual input nodes; Artificial neural networks; Backpropagation; Band pass filters; Feedforward neural networks; Filtering; Fourier series; Neural networks; Neurons; Signal processing; Transfer functions;
Conference_Titel :
Neural Networks, 1992. IJCNN., International Joint Conference on
Conference_Location :
Baltimore, MD
Print_ISBN :
0-7803-0559-0
DOI :
10.1109/IJCNN.1992.287215