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Discrete memristor applied to construct neural networks with homogeneous and heterogeneous coexisting attractors

Qiang Lai, Liang Yang

2023Chaos Solitons & Fractals79 citationsDOIOpen Access PDF

Abstract

Memristors are widely used to simulate the effects of electromagnetic radiation on neurons or as synapses to simulate excitation and inhibition between neurons. This paper constructs discrete neural network models (DNNMs) in three scenarios: without discrete memristor, discrete memristor simulate electromagnetic radiation stimulation, and discrete local active memristor simulate synapses. Research reveals that the DNNM without fixed points under electromagnetic radiation stimulation, which in turn induces hidden hyperchaotic attractors and also observes the existence of infinite coexisting homogeneous attractors. Meanwhile, the DNNM can generate heterogeneous coexisting attractors after introducing a memristor to mimic synapses. Numerical results show that discrete memristors can induce the DNNM to develop more complex chaotic dynamics. In addition, a hardware platform is designed to validate the numerical results, and the DNNMs are applied to construct the pseudo-random number generator (PRNG).

Topics & Concepts

MemristorAttractorChaoticArtificial neural networkHomogeneousConstruct (python library)Computer scienceTopology (electrical circuits)MemistorStatistical physicsControl theory (sociology)PhysicsMathematicsElectronic engineeringArtificial intelligenceResistive random-access memoryEngineeringMathematical analysisControl (management)Quantum mechanicsElectrodeProgramming languageCombinatoricsAdvanced Memory and Neural Computingstochastic dynamics and bifurcationNeural dynamics and brain function