Analytical approaches for the amplitude and frequency computations in the astable cellular neural networks with opposite sign templates

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Date

2007

Authors

Tander, B.
Özmen, A.

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Yes

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Abstract

In this paper, by using surface fitting methods, analytical approaches for amplitudes and frequencies of the x1,2(t) "States" in a simple dynamical neural network called "Cellular Neural Network with Opposite Sign Templates" which was proposed by Zou and Nossek [1], are obtained under oscillation conditions. The mentioned explicit expressions are employed in a cellular neural network based, amplitude and frequency tuneable oscillator design.

Description

2007 IEEE 15th Signal Processing and Communications Applications, SIU --11 June 2007 through 13 June 2007 --Eskisehir --73089

Keywords

Analytical approaches, Frequency computations, Surface fitting methods, Artificial intelligence, Cellular neural networks, Curve fitting, Signal processing, Neural networks, Frequency computations, Signal processing, Artificial intelligence, Analytical approaches, Curve fitting, Cellular neural networks, Stability, Surface fitting methods, Neural networks

Fields of Science

0202 electrical engineering, electronic engineering, information engineering, 02 engineering and technology

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1

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2007 IEEE 15th Signal Processing and Communications Applications, SIU

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1

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4
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2

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