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Tunable superconducting neurons for networks based on radial basis functions

Andrey E. Schegolev, N. V. Klenov, S. V. Bakurskiy, I. I. Soloviev, M. Yu. Kupriyanov, М. В. Терешонок, Anatolie Sidorenko

2022Beilstein Journal of Nanotechnology30 citationsDOIOpen Access PDF

Abstract

The hardware implementation of signal microprocessors based on superconducting technologies seems relevant for a number of niche tasks where performance and energy efficiency are critically important. In this paper, we consider the basic elements for superconducting neural networks on radial basis functions. We examine the static and dynamic activation functions of the proposed neuron. Special attention is paid to tuning the activation functions to a Gaussian form with relatively large amplitude. For the practical implementation of the required tunability, we proposed and investigated heterostructures designed for the implementation of adjustable inductors that consist of superconducting, ferromagnetic, and normal layers.

Topics & Concepts

SuperconductivityComputer scienceBasis (linear algebra)HeterojunctionInductorGaussianEnergy (signal processing)Topology (electrical circuits)Electronic engineeringPhysicsElectrical engineeringOptoelectronicsCondensed matter physicsMathematicsVoltageEngineeringQuantum mechanicsGeometryNeural Networks and ApplicationsAdvancements in Semiconductor Devices and Circuit DesignAdvanced Memory and Neural Computing