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Complexity analysis and discrete fractional difference implementation of the Hindmarsh–Rose neuron system

Maysaa Al-Qurashi, Qurat ul Ain Asif, Yu‐Ming Chu, Saima Rashid, S.K. Elagan

2023Results in Physics22 citationsDOIOpen Access PDF

Abstract

Nowadays, multistability assessment in discrete nonlinear fractional difference systems is an emotive topic. This paper introduces a novel discrete, nonequilibrium, memristor-based Hindmarsh–Rose neuron (HRN) with the Caputo fractional difference scheme. Furthermore, in a setting involving commensurate and incommensurate scenarios, the complex structure of the proposed discrete fractional model, which includes its multistability, concealed chaos and hyperchaotic attractor, is examined using a wide range of computational approaches, such as Lyapunov exponents, phase portraits, bifurcation illustrations, and the 0–1 evaluation emergence of synchronization. These evolving properties imply that the fractional discrete HRN has an undetected multistability. Ultimately, an elaborate investigation is performed to confirm the existence of unpredictability employing approximation entropy (ApEn) and the ℂ0 measurements. It is demonstrated that whenever the immediate synchronization indicates that it happens, the neurons’ interactions modify, recurring in decreasing fractional orders. Furthermore, minimizing the derivative order increases the incidence of explosions in the synchronization manifold, which is opposite to the behaviour of one nerve cell.

Topics & Concepts

MultistabilityPhase portraitAttractorMathematicsLyapunov exponentBifurcationNonlinear systemSynchronization (alternating current)MemristorDiscrete time and continuous timeApproximate entropyStatistical physicsChaoticApplied mathematicsTopology (electrical circuits)Mathematical analysisComputer sciencePhysicsArtificial intelligenceCombinatoricsQuantum mechanicsStatisticsTime seriesstochastic dynamics and bifurcationNeural Networks Stability and SynchronizationNeural dynamics and brain function