A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches

Development of neuromorphic systems based on new nanoelectronics materials and devices is of immediate interest for solving the problems of cognitive technology and cybernetics. Computational modeling of two- and three-oscillator schemes with thermally coupled VO2-switches is used to demonstrate a n...

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Main Authors: Andrei Velichko, Maksim Belyaev, Vadim Putrolaynen, Petr Boriskov
Format: Article
Language:English
Published: MDPI AG 2018-10-01
Series:Electronics
Subjects:
Online Access:http://www.mdpi.com/2079-9292/7/10/266
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spelling doaj-c66c918399ca4d83a57cf4b4632786972020-11-25T00:09:35ZengMDPI AGElectronics2079-92922018-10-0171026610.3390/electronics7100266electronics7100266A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive SwitchesAndrei Velichko0Maksim Belyaev1Vadim Putrolaynen2Petr Boriskov3Institute of Physics and Technology, Petrozavodsk State University, 31 Lenina str., Petrozavodsk 185910, RussiaInstitute of Physics and Technology, Petrozavodsk State University, 31 Lenina str., Petrozavodsk 185910, RussiaInstitute of Physics and Technology, Petrozavodsk State University, 31 Lenina str., Petrozavodsk 185910, RussiaInstitute of Physics and Technology, Petrozavodsk State University, 31 Lenina str., Petrozavodsk 185910, RussiaDevelopment of neuromorphic systems based on new nanoelectronics materials and devices is of immediate interest for solving the problems of cognitive technology and cybernetics. Computational modeling of two- and three-oscillator schemes with thermally coupled VO2-switches is used to demonstrate a novel method of pattern storage and recognition in an impulse oscillator neural network (ONN), based on the high-order synchronization effect. The method allows storage of many patterns, and their number depends on the number of synchronous states Ns. The modeling demonstrates attainment of Ns of several orders both for a three-oscillator scheme Ns ~ 650 and for a two-oscillator scheme Ns ~ 260. A number of regularities are obtained, in particular, an optimal strength of oscillator coupling is revealed when Ns has a maximum. Algorithms of vector storage, network training, and test vector recognition are suggested, where the parameter of synchronization effectiveness is used as a degree of match. It is shown that, to reduce the ambiguity of recognition, the number coordinated in each vector should be at least one unit less than the number of oscillators. The demonstrated results are of a general character, and they may be applied in ONNs with various mechanisms and oscillator coupling topology.http://www.mdpi.com/2079-9292/7/10/266oscillatory neural networkspattern recognitionhigher order synchronizationthermal couplingvanadium dioxide
collection DOAJ
language English
format Article
sources DOAJ
author Andrei Velichko
Maksim Belyaev
Vadim Putrolaynen
Petr Boriskov
spellingShingle Andrei Velichko
Maksim Belyaev
Vadim Putrolaynen
Petr Boriskov
A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches
Electronics
oscillatory neural networks
pattern recognition
higher order synchronization
thermal coupling
vanadium dioxide
author_facet Andrei Velichko
Maksim Belyaev
Vadim Putrolaynen
Petr Boriskov
author_sort Andrei Velichko
title A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches
title_short A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches
title_full A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches
title_fullStr A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches
title_full_unstemmed A New Method of the Pattern Storage and Recognition in Oscillatory Neural Networks Based on Resistive Switches
title_sort new method of the pattern storage and recognition in oscillatory neural networks based on resistive switches
publisher MDPI AG
series Electronics
issn 2079-9292
publishDate 2018-10-01
description Development of neuromorphic systems based on new nanoelectronics materials and devices is of immediate interest for solving the problems of cognitive technology and cybernetics. Computational modeling of two- and three-oscillator schemes with thermally coupled VO2-switches is used to demonstrate a novel method of pattern storage and recognition in an impulse oscillator neural network (ONN), based on the high-order synchronization effect. The method allows storage of many patterns, and their number depends on the number of synchronous states Ns. The modeling demonstrates attainment of Ns of several orders both for a three-oscillator scheme Ns ~ 650 and for a two-oscillator scheme Ns ~ 260. A number of regularities are obtained, in particular, an optimal strength of oscillator coupling is revealed when Ns has a maximum. Algorithms of vector storage, network training, and test vector recognition are suggested, where the parameter of synchronization effectiveness is used as a degree of match. It is shown that, to reduce the ambiguity of recognition, the number coordinated in each vector should be at least one unit less than the number of oscillators. The demonstrated results are of a general character, and they may be applied in ONNs with various mechanisms and oscillator coupling topology.
topic oscillatory neural networks
pattern recognition
higher order synchronization
thermal coupling
vanadium dioxide
url http://www.mdpi.com/2079-9292/7/10/266
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