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Chaos in a two dimensional fractional discrete Hopfield neural network and its control

Abdallah Al-Husban, Rabia Chaimaà Karoun, Ahmed Salem Heilat, Mohammed Al Horani, Amina–Aicha Khennaoui, Giuseppe Grassi, Antonio Vincenzo Radogna, Adel Ouannas

2023Alexandria Engineering Journal27 citationsDOIOpen Access PDF

Abstract

A novel two-dimensional fractional discrete Hopfield neural network is presented in this study, which is based on discrete fractional calculus. This network incorporates both constant and variable orders, and its behavior is examined using phase plots, time evolution, bifurcation, Lyapunov exponents, and complexity analysis. Compared to integer and constant fractional orders, the numerical simulations demonstrate that the proposed variable-order fractional HNN exhibits more complex characteristics, and by selecting different fractional variable orders, novel attractors with chaotic behavior can be obtained. Additionally, a control scheme is proposed to stabilize the suggested neural network by utilizing the stability theorem for fractional discrete time systems. This control scheme is applied to both states in the study.

Topics & Concepts

MathematicsAttractorArtificial neural networkConstant (computer programming)Lyapunov exponentHopfield networkControl theory (sociology)Variable (mathematics)ChaoticInteger (computer science)Fractional calculusDiscrete time and continuous timeBifurcationStability (learning theory)Applied mathematicsControl (management)Computer scienceMathematical analysisNonlinear systemPhysicsArtificial intelligenceProgramming languageQuantum mechanicsMachine learningStatisticsNeural Networks and ApplicationsChaos control and synchronizationNeural Networks Stability and Synchronization
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