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      Hidden Bursting Firings and Bifurcation Mechanisms in Memristive Neuron Model With Threshold Electromagnetic Induction

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          Abstract

          <p class="first" id="d778347e59">Memristors can be employed to mimic biological neural synapses or to describe electromagnetic induction effects. To exhibit the threshold effect of electromagnetic induction, this paper presents a threshold flux-controlled memristor and examines its frequency-dependent pinched hysteresis loops. Using an electromagnetic induction current generated by the threshold memristor to replace the external current in 2-D Hindmarsh-Rose (HR) neuron model, a 3-D memristive HR (mHR) neuron model with global hidden oscillations is established and the corresponding numerical simulations are performed. It is found that due to no equilibrium point, the obtained mHR neuron model always operates in hidden bursting firing patterns, including coexisting hidden bursting firing patterns with bistability also. In addition, the model exhibits complex dynamics of the actual neuron electrical activities, which acts like the 3-D HR neuron model, indicating its feasibility. In particular, by constructing the fold and Hopf bifurcation sets of the fast-scale subsystem, the bifurcation mechanisms of hidden bursting firings are expounded. Finally, circuit experiments on hardware breadboards are deployed and the captured results well match with the numerical results, validating the physical mechanism of biological neuron and the reliability of electronic neuron. </p>

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          Author and article information

          Contributors
          Journal
          IEEE Transactions on Neural Networks and Learning Systems
          IEEE Trans. Neural Netw. Learning Syst.
          Institute of Electrical and Electronics Engineers (IEEE)
          2162-237X
          2162-2388
          February 2020
          February 2020
          : 31
          : 2
          : 502-511
          Article
          10.1109/TNNLS.2019.2905137
          30990198
          a01aea70-77fa-4b04-81e1-b503fe536ba0
          © 2020
          History

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