RUS  ENG
Full version
JOURNALS // Pisma v Zhurnal Tekhnicheskoi Fiziki // Archive

Pisma v Zhurnal Tekhnicheskoi Fiziki, 2021 Volume 47, Issue 13, Pages 3–7 (Mi pjtf4740)

This article is cited in 2 papers

Frequency-coded control of the conductance of memristors based on nanoscale layers of LiNbO$_3$ and (Co$_{40}$Fe$_{40}$B$_{20}$)$_{x}$(LiNbO$_{3}$)$_{100-x}$ composite in trained spiking neural networks

A. I. Ilyasovab, A. V. Emelyanova, K. È. Nikiruya, A. A. Minnekhanova, E. V. Kukuevaa, I. A. Surazhevskya, A. V. Sitnikova, V. V. Ryl'kovac, V. A. Demina

a National Research Centre "Kurchatov Institute", Moscow
b Lomonosov Moscow State University
c Kotelnikov Institute of Radioengineering and Electronics, Fryazino Branch, Russian Academy of Sciences

Abstract: The memristive properties of Cu/nanocomposite/LiNbO$_3$/Cu capacitor structures based on a (Co$_{40}$Fe$_{40}$B$_{20}$)$_{x}$(LiNbO$_{3}$)$_{100-x}$ nanocomposite and an amorphous LiNbO$_3$ interlayer with thicknesses of about 40 and 20 nm, respectively, have been studied. It was found that these structures have relatively low resistive switching voltages ($\sim$2 V) and are capable of withstanding more than 10$^4$ cyclic switchings due to the formation of conducting channels in LiNbO$_3$ in fixed regions specified by the position of percolation chains of CoFe nanograins in the nanocomposite. It is shown that the conductance of Cu/nanocomposite/LiNbO$_3$/Cu memristors can vary according to local biosimilar rules. A simple neural network based on such memristors, trained by feeding a frequency-coded noise signal to its inputs, was implemented.

Keywords: memristor, nanocomposite, resistive switching, electronic memristive synapse, spiking neural network.

Received: 02.03.2021
Revised: 02.03.2021
Accepted: 19.03.2021

DOI: 10.21883/PJTF.2021.13.51112.18750


 English version:
Technical Physics Letters, 2021, 47:9, 656–660

Bibliographic databases:


© Steklov Math. Inst. of RAS, 2024