Base Elements for Artificial Neural Network: Structure Modeling, Production, Properties

Author:

Sidorenko Anatolie1,Klenov Nikolai2,Soloviev Igor2,Bakurskiy Sergey2,Boian Vladimir3,Morari Roman3,Savva Yurii4,Lomakin Arkadii4,Sidorenko Ludmila5,Sidorenko Svetlana6,Sidorenko Irina7,Severyukhina Olesya4ORCID,Fedotov Aleksey4ORCID,Salamatina Anastasia4,Vakhrushev Alexander4ORCID

Affiliation:

1. Laboratory of Cryogenics Institute of Electronic Engineering and Nanotechnologies of Technical University of Moldova, Moldova

2. Skobeltsyn Institute of Nuclear Physics M.V. Lomonosov Moscow State University Moscow, Russia

3. Laboratory of Cryogenics Institute of Electronic Engineering and Nanotechnologies of Technical University of Moldova Chisinau, Moldova

4. Laboratory of Functional Nanostructures I.S. Turgenev Orel State University Orel, Russia

5. Department of Molecular Biology and Human Genetics State Medical and Pharmaceutical University “Nicolae Testemitanu” Chisinau, Moldova

6. Rehazentrum Klinik Bad Ragaz Bad Ragaz, Switzerland

7. Department of Neurology Medical Center “Gesundheit” Chisinau, Moldova

Abstract

A radical reduction in power consumption is becoming an important task in the development of supercomputers. Artificial neural networks (ANNs) based on superconducting elements of spintronics seem to be the most promising solution. A superconducting ANN needs to develop two basic elements - a nonlinear (neuron) and a linear connecting element (synapse). The theoretical and experimental results of this complex and interdisciplinary problem are presented in this paper. The results of our theoretical and experimental study of the proximity effect in a stacked superconductor/ferromagnet (S/F) superlattice with Co-ferromagnetic layers of various thicknesses and coercive fields and Nb-superconducting layers of constant thickness equal to the coherence length of niobium and some studies using computer simulation of the formation of such multilayer nanostructures and their magnetic properties are presented in this article.

Publisher

North Atlantic University Union (NAUN)

Subject

Electrical and Electronic Engineering,Signal Processing

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