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Unpredictable Oscillations for Hopfield-Type Neural Networks with Delayed and Advanced Arguments

Marat Akhmet, Duygu Aruğaslan Çinçin, Madina Tleubergenova, Zakhira Nugayeva

2021Mathematics21 citationsDOIOpen Access PDF

Abstract

This is the first time that the method for the investigation of unpredictable solutions of differential equations has been extended to unpredictable oscillations of neural networks with a generalized piecewise constant argument, which is delayed and advanced. The existence and exponential stability of the unique unpredictable oscillation are proven. According to the theory, the presence of unpredictable oscillations is strong evidence for Poincaré chaos. Consequently, the paper is a contribution to chaos applications in neuroscience. The model is inspired by chaotic time-varying stimuli, which allow studying the distribution of chaotic signals in neural networks. Unpredictable inputs create an excitation wave of neurons that transmit chaotic signals. The technique of analysis includes the ideas used for differential equations with a piecewise constant argument. The results are illustrated by examples and simulations. They are carried out in MATLAB Simulink to demonstrate the simplicity of the diagrammatic approaches.

Topics & Concepts

PiecewiseChaoticArtificial neural networkConstant (computer programming)Computer scienceCellular neural networkStability (learning theory)Differential equationExponential stabilityOscillation (cell signaling)Hopfield networkControl theory (sociology)Synchronization of chaosMathematicsNonlinear systemPhysicsArtificial intelligenceMathematical analysisControl (management)Programming languageGeneticsMachine learningQuantum mechanicsBiologyNeural Networks and ApplicationsNeural Networks Stability and SynchronizationChaos control and synchronization
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