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Effects of bias current and control of multistability in 3D hopfield neural network

Bertrand Frederick Boui A Boya, Balamurali Ramakrishnan, Joseph Yves Effa, Jacques Kengne, Karthikeyan Rajagopal

2023Heliyon15 citationsDOIOpen Access PDF

Abstract

This work studies the dynamics of a three dimensional Hopfield neural network focusing on the impact of bias terms. In the presence of bias terms, the models displays an odd symmetry and experiences typical behaviors including period doubling, spontaneous symmetry breaking, merging crisis, bursting oscillation, coexisting attractors and coexisting period-doubling reversals as well. Multistability control is investigated by employing the linear augmentation feedback strategy. We numerically prove that the multistable neural system can be adjusted to experience only a single attractor behavior when the coupling coefficient is gradually monitored. Experimental results from a microcontroller based realization of the underlined neural system are consistent with the theoretical analysis.

Topics & Concepts

MultistabilityAttractorArtificial neural networkRealization (probability)Hopfield networkControl theory (sociology)Oscillation (cell signaling)BurstingStatistical physicsSymmetry (geometry)Coupling (piping)Computer sciencePhysicsNonlinear systemControl (management)MathematicsArtificial intelligencePsychologyMathematical analysisQuantum mechanicsEngineeringChemistryStatisticsNeuroscienceBiochemistryMechanical engineeringGeometryNeural Networks Stability and Synchronizationstochastic dynamics and bifurcationNeural Networks and Applications
Effects of bias current and control of multistability in 3D hopfield neural network | Litcius