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Erschienen in: Neural Computing and Applications 7/2020

29.07.2019 | Original Article

A biomorphic neuron model and principles of designing a neural network with memristor synapses for a biomorphic neuroprocessor

verfasst von: V. A. Filippov, A. N. Bobylev, A. N. Busygin, A. D. Pisarev, S. Yu. Udovichenko

Erschienen in: Neural Computing and Applications | Ausgabe 7/2020

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Abstract

This paper presents an original biomorphic neuron model, which differs from common IT models by a more complex synapse structure and from biological models by replacement of differential equations that describe the change in potential over time with explicit recurrence expressions by approximation of experimental data in the cortical neuron, and therefore, by transition from the spiking information coding to the coding using the average frequency of action potentials per a simulation step. This approach ensures sufficiently simple and efficient calculation of an ultra-large neural network in the stand-alone hardware with limited computing resources. The model consists of three separate functional parts: dendrites, soma, and axon, which allows implementing any connections between functional parts of different neurons, thus making the neural network architecture more flexible. To perform functional testing of the neuron model, the test neural network performing simple association and constructed as a consequent stack of functional blocks with primary connections organized using experimental neurophysiological data was simulated. It is shown that encoding of the information transmitted by the impulses, similar to biological ones, allows using memristors for calculating recurrence expressions that describe the change in the quantity of neurotransmitter receptors of the dendrite membrane. The elaborated biomorphic neuron model, defined conceptual principles of a neural network construction based on it, as well as replacement of synapses in the neural network with memristors will allow building an ultra-large biomorphic neural network that simulates the functioning of a separate brain cortical column in the stand-alone hardware—a biomorphic neuroprocessor.

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Literatur
5.
Zurück zum Zitat Pisarev AD, Busygin AN, Udovichenko SYu, Bobylev AN, Maevsky OV (2018) A biomorphic neuroprocessor based on the composite memristor-diode crossbar. Book of abstracts of international workshop from RERAM and Memristors to new Computing Paradigms (MEM-Q):25 Pisarev AD, Busygin AN, Udovichenko SYu, Bobylev AN, Maevsky OV (2018) A biomorphic neuroprocessor based on the composite memristor-diode crossbar. Book of abstracts of international workshop from RERAM and Memristors to new Computing Paradigms (MEM-Q):25
11.
Zurück zum Zitat Govoreanu B, Kar GS, Chen Y-Y et al. (2011) 10 × 10 nm2 Hf/HfOx crossbar resistive RAM with excellent performance, reliability and low-energy operation. In: Proceedings of 2011 IEEE international electron devices meeting (IEDM), pp 31.6.1–31.6.4. https://doi.org/10.1109/IEDM.2011.6131652 Govoreanu B, Kar GS, Chen Y-Y et al. (2011) 10 × 10 nm2 Hf/HfOx crossbar resistive RAM with excellent performance, reliability and low-energy operation. In: Proceedings of 2011 IEEE international electron devices meeting (IEDM), pp 31.6.1–31.6.4. https://​doi.​org/​10.​1109/​IEDM.​2011.​6131652
Metadaten
Titel
A biomorphic neuron model and principles of designing a neural network with memristor synapses for a biomorphic neuroprocessor
verfasst von
V. A. Filippov
A. N. Bobylev
A. N. Busygin
A. D. Pisarev
S. Yu. Udovichenko
Publikationsdatum
29.07.2019
Verlag
Springer London
Erschienen in
Neural Computing and Applications / Ausgabe 7/2020
Print ISSN: 0941-0643
Elektronische ISSN: 1433-3058
DOI
https://doi.org/10.1007/s00521-019-04383-7

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