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Publication:

Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics

Date

Date

Date
2018
Journal Article
Published version
cris.lastimport.scopus2025-05-28T03:33:50Z
cris.lastimport.wos2025-07-20T01:31:47Z
dc.contributor.institutionInstitute of Neuroinformatics
dc.date.accessioned2019-03-08T11:26:59Z
dc.date.available2019-03-08T11:26:59Z
dc.date.issued2018-10
dc.description.abstract

Spiking neural networks (SNNs) employing memristive synapses are capable of life-long online learning. Because of their ability to process and classify large amounts of data in real-time using compact and low-power electronic systems, they promise a substantial technology breakthrough. However, the critical issue that memristor-based SNNs have to face is the fundamental limitation in their memory capacity due to finite resolution of the synaptic elements, which leads to the replacement of old memories with new ones and to a finite memory lifetime. In this study we demonstrate that the nonlinear conductance dynamics of memristive devices can be exploited to improve the memory lifetime of a network. The network is simulated on the basis of a spiking neuron model of mixed-signal digital-analogue sub-threshold neuromorphic CMOS circuits, and on memristive synapse models derived from the experimental nonlinear conductance dynamics of resistive memory devices when stimulated by trains of identical pulses. The network learning circuits implement a spike-based plasticity rule compatible with both spike-timing and rate-based learning rules. In order to get an insight on the memory lifetime of the network, we analyse the learning dynamics in the context of a classical benchmark of neural network learning, that is hand-written digit classification. In the proposed architecture, the memory lifetime and the performance of the network are improved for memristive synapses with nonlinear dynamics with respect to linear synapses with similar resolution. These results demonstrate the importance of following holistic approaches that combine the study of theoretical learning models with the development of neuromorphic CMOS SNNs with memristive devices used to implement life-long on-chip learning.

dc.identifier.doi10.1088/1361-6528/aae81c
dc.identifier.issn0957-4484
dc.identifier.scopus2-s2.0-85056084486
dc.identifier.urihttps://www.zora.uzh.ch/handle/20.500.14742/155782
dc.identifier.wos000448981300001
dc.language.isoeng
dc.subject.ddc570 Life sciences; biology
dc.title

Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics

dc.typearticle
dcterms.accessRightsinfo:eu-repo/semantics/openAccess
dcterms.bibliographicCitation.journaltitleNanotechnology
dcterms.bibliographicCitation.number1
dcterms.bibliographicCitation.originalpublishernameIOP Publishing
dcterms.bibliographicCitation.pagestart015102
dcterms.bibliographicCitation.urlhttps://iopscience.iop.org/article/10.1088/1361-6528/aae81c
dcterms.bibliographicCitation.volume30
dspace.entity.typePublicationen
uzh.contributor.affiliationConsiglio Nazionale delle Ricerche
uzh.contributor.affiliationPolitecnico di Torino
uzh.contributor.affiliationUniversity of Zurich
uzh.contributor.affiliationConsiglio Nazionale delle Ricerche
uzh.contributor.affiliationConsiglio Nazionale delle Ricerche
uzh.contributor.affiliationPolitecnico di Torino
uzh.contributor.affiliationUniversity of Zurich
uzh.contributor.affiliationConsiglio Nazionale delle Ricerche
uzh.contributor.authorBrivio, S
uzh.contributor.authorConti, D
uzh.contributor.authorNair, M V
uzh.contributor.authorFrascaroli, J
uzh.contributor.authorCovi, E
uzh.contributor.authorRicciardi, C
uzh.contributor.authorIndiveri, G
uzh.contributor.authorSpiga, S
uzh.contributor.correspondenceYes
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.document.availabilitypublished_version
uzh.eprint.datestamp2019-03-08 11:26:59
uzh.eprint.lastmod2025-07-20 01:36:52
uzh.eprint.statusChange2019-03-08 11:26:59
uzh.harvester.ethYes
uzh.harvester.nbNo
uzh.identifier.doi10.5167/uzh-168620
uzh.jdb.eprintsId18256
uzh.oastatus.unpaywallhybrid
uzh.oastatus.zoraHybrid
uzh.publication.citationBrivio, S., Conti, D., Nair, M. V., Frascaroli, J., Covi, E., Ricciardi, C., Indiveri, G., & Spiga, S. (2018). Extended memory lifetime in spiking neural networks employing memristive synapses with nonlinear conductance dynamics. Nanotechnology, 30, 015102. https://doi.org/10.1088/1361-6528/aae81c
uzh.publication.facultyscience
uzh.publication.originalworkoriginal
uzh.publication.publishedStatusfinal
uzh.publication.seriesTitleNanotechnology
uzh.scopus.impact33
uzh.scopus.subjectsBioengineering
uzh.scopus.subjectsGeneral Chemistry
uzh.scopus.subjectsGeneral Materials Science
uzh.scopus.subjectsMechanics of Materials
uzh.scopus.subjectsMechanical Engineering
uzh.scopus.subjectsElectrical and Electronic Engineering
uzh.workflow.doajuzh.workflow.doaj.false
uzh.workflow.eprintid168620
uzh.workflow.fulltextStatuspublic
uzh.workflow.revisions51
uzh.workflow.rightsCheckkeininfo
uzh.workflow.statusarchive
uzh.wos.impact31
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