Journal of Applied Physics, volume 124, issue 15, pages 152113
Adiabatic superconducting artificial neural network: Basic cells
Igor I Soloviev
1, 2, 3
,
Andrey E. Schegolev
1, 2, 4, 5
,
Nikolay V. Klenov
1, 2, 4, 5, 6
,
Sergey V Bakurskiy
1, 2, 3
,
M.V. Tereshonok
2, 5
,
Anton V Shadrin
3
,
V. S. Stolyarov
3, 6, 7, 8
,
Alexander A Golubov
3, 9
1
8
Solid State Physics Department, KFU 8 , 420008 Kazan, Russia
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Publication type: Journal Article
Publication date: 2018-09-26
Journal:
Journal of Applied Physics
scimago Q2
SJR: 0.649
CiteScore: 5.4
Impact factor: 2.7
ISSN: 00218979, 10897550
General Physics and Astronomy
Abstract
We consider adiabatic superconducting cells operating as an artificial neuron and synapse of a multilayer perceptron (MLP). Their compact circuits contain just one and two Josephson junctions, respectively. While the signal is represented as magnetic flux, the proposed cells are inherently nonlinear and close-to-linear magnetic flux transformers. The neuron is capable of providing the one-shot calculation of sigmoid and hyperbolic tangent activation functions most commonly used in MLP. The synapse features both positive and negative signal transfer coefficients in the range ∼ ( − 0.5 , 0.5 ). We briefly discuss implementation issues and further steps toward the multilayer adiabatic superconducting artificial neural network, which promises to be a compact and the most energy-efficient implementation of MLP.We consider adiabatic superconducting cells operating as an artificial neuron and synapse of a multilayer perceptron (MLP). Their compact circuits contain just one and two Josephson junctions, respectively. While the signal is represented as magnetic flux, the proposed cells are inherently nonlinear and close-to-linear magnetic flux transformers. The neuron is capable of providing the one-shot calculation of sigmoid and hyperbolic tangent activation functions most commonly used in MLP. The synapse features both positive and negative signal transfer coefficients in the range ∼ ( − 0.5 , 0.5 ). We briefly discuss implementation issues and further steps toward the multilayer adiabatic superconducting artificial neural network, which promises to be a compact and the most energy-efficient implementation of MLP.
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