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IJCNN
2000
IEEE

Analog Hardware Implementation of the Random Neural Network Model

13 years 9 months ago
Analog Hardware Implementation of the Random Neural Network Model
This paper presents a simple continuous analog hardware realization of the Random Neural Network (RNN) model. The proposed circuit uses the general principles resulting from the understanding of the basic properties of the ring neuron. The circuit for the neuron model consists only of operational ampli ers, transistors, and resistors, which makes it candidate for VLSI implementation of random neural networks with feedforward or recurrent structures. Although the literature is rich with various methods for implementing the di erent neural networks structures, the proposed implementation is very simple and can be built using discrete integrated circuits for problems that need a small number of neurons. A software package, RNNSIM, has been developed to train the RNN model and supply the network parameters which can be mapped to the hardware structure. As an assessment on the proposed circuit, a simple neural network mapping function has been designed and simulated using PSpice.
Hossam Abdelbaki, Erol Gelenbe, Said E. El-Khamy
Added 31 Jul 2010
Updated 31 Jul 2010
Type Conference
Year 2000
Where IJCNN
Authors Hossam Abdelbaki, Erol Gelenbe, Said E. El-Khamy
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