Corpus ID: 232075717

Stochastic Memristive Interface between Electronic FitzHugh-Nagumo Neurons

@inproceedings{Gerasimova2021StochasticMI,
  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},
  year={2021}
}
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

Figures from this paper

References

SHOWING 1-10 OF 39 REFERENCES
A differential memristive synapse circuit for on-line learning in neuromorphic computing systems
TLDR
This paper proposes a novel circuit that decouples the current produced by the memristive device from the one used to stimulate the post-synaptic neuron, by using a novel differential scheme based on the Gilbert normalizer circuit. Expand
Memristor-based neural networks
TLDR
This work presents and explains the relevant mechanisms in a biological neural network, such as long-term potentiation and spike time-dependent plasticity, and determines the minimal requirements for an artificial neural network. Expand
A memristive spiking neuron with firing rate coding
TLDR
A spiking neuron model is experimentally realized in a compact circuit comprising memristive and memcapacitive devices based on the strongly correlated electron material vanadium dioxide (VO2) and on the chemical electromigration cell Ag/TiO2−x/Al. Expand
Simulation of synaptic coupling of neuron-like generators via a memristive device
A physical model of synaptically coupled neuron-like generators interacting via a memristive device has been presented. The model simulates the synaptic transmission of pulsed signals between brainExpand
A compound memristive synapse model for statistical learning through STDP in spiking neural networks
TLDR
The compound memristive synapse may provide a synaptic design principle for future neuromorphic architectures because its emergent synapse configuration represents the most salient features of the input distribution in a Mixture-of-Gaussians generative model. Expand
Tolerance of intrinsic device variation in fuzzy restricted Boltzmann machine network based on memristive nano-synapses
TLDR
A fuzzy restricted Boltzmann machine (FRBM) network was constructed where all the weight states were fuzzified to accommodate device stochasticity, and has shown significantly improved tolerance to device variation, as confirmed by increased accuracy in the benchmark test of MNIST handwritten digit classifications. Expand
Neurohybrid Memristive CMOS-Integrated Systems for Biosensors and Neuroprosthetics
TLDR
The concept represents an example of a brain-on-chip system belonging to a more general class of memristive neurohybrid systems for a new-generation robotics, artificial intelligence, and personalized medicine, discussed in the framework of the proposed roadmap for the next decade period. Expand
Memristor Networks
TLDR
Top experts in computer science, mathematics, electronics, physics and computer engineering present foundations of the memristor theory and applications, demonstrate how to design neuromorphic network architectures based on Memristor assembles, analyse varieties of the dynamic behaviour of memristive networks and show how to realise computing devices from memristors. Expand
Experimental study of electrical FitzHugh-Nagumo neurons with modified excitability
TLDR
An electronical circuit modelling a FitzHugh-Nagumo neuron with a modified excitability is presented, showing experimentally how the coupling strength controls the dynamics of the slave neuron, leading to frequency locking, chaotic behavior and synchronization. Expand
Memristor Crossbar for Adaptive Synchronization
TLDR
This paper adopts a memristor crossbar architecture for adaptive synchronization that is robust to device variability and faults, and shows that the performance of the approach may also improve as adaptation becomes more significant. Expand
...
1
2
3
4
...