Corpus ID: 232075717

Stochastic Memristive Interface between Electronic FitzHugh-Nagumo Neurons

  title={Stochastic Memristive Interface between Electronic FitzHugh-Nagumo Neurons},
  author={Svetlana A. Gerasimova and Alexey Belov and Dmitry S. Korolev and D. Guseinov and Albina V. Lebedeva and M. N. Koryazhkina and Alexey N. Mikhaylov and Victor B. Kazantsev and Alexander N. Pisarchik},
The dynamics of memristive device in response to neuron-like signals and coupling electronic neurons via memristive device has been investigated theoretically and experimentally. The simplest experimental system consists of electronic circuit based on the FitzHugh-Nagumo model and metaloxide memristive device. The hardware-software complex based on commercial data acquisition system is implemented for the imitation of signal from presynaptic neuron`s membrane and synaptic signal transmission… Expand

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