Litcius/Paper detail

Four-scroll attractor on the dynamics of a novel Hopfield neural network based on bi-neurons without bias current

Bertrand Frederick Boui A Boya, Jacques Kengne, G. Djuidjé Kenmoé, Joseph Yves Effa

2022Heliyon26 citationsDOIOpen Access PDF

Abstract

The dynamics of a neural network under several factors (bias current and electromagnetic induction effect) are recently used to simulate activities of the brain under different excitation. In this paper, we introduce a novel Hopfield neural network (HNN) based on two neurons with a memristive synaptic weight connected between neuron one and two based of flux controlled memristor recently proposed by Hua M. et al., in 2022. Using analysis tools, we proved that this model can develop rich dynamical characteristics such as various number of equilibrium points when the parameters are varied, four-scroll attractors, transient chaos, multistability of more than three different attractors and intermittency chaos phenomenon are reported. Moreover, when increasing a synaptic weight, the model shows bursting oscillations phenomenon. To obtain the normal state of the brain, the control of multistability to a strange monostable state is carry out. Finally, microcontroller implementation of the model is considered to verify the numerical analysis.

Topics & Concepts

MultistabilityAttractorIntermittencyArtificial neural networkHopfield networkMemristorComputer scienceControl theory (sociology)BurstingMultivibratorSynaptic weightStatistical physicsTopology (electrical circuits)PhysicsMathematicsArtificial intelligenceVoltageNeuroscienceControl (management)Nonlinear systemMathematical analysisThermodynamicsCombinatoricsQuantum mechanicsTurbulenceBiologystochastic dynamics and bifurcationNeural dynamics and brain functionAdvanced Memory and Neural Computing
Four-scroll attractor on the dynamics of a novel Hopfield neural network based on bi-neurons without bias current | Litcius