Publication:

Low-Energy and Fast Spiking Neural Network For Context-Dependent Learning on FPGA

Date

Date

Date
2020
Journal Article
Published version
cris.lastimport.scopus2025-06-08T03:38:33Z
cris.lastimport.wos2025-07-24T01:31:07Z
dc.contributor.institutionUniversity of Zurich
dc.date.accessioned2021-02-15T17:30:26Z
dc.date.available2021-02-15T17:30:26Z
dc.date.issued2020-11-01
dc.description.abstract

Supervised, unsupervised, and reinforcement learning (RL) mechanisms are known as the most powerful learning paradigms empowering neuromorphic systems. These systems typically take advantage of unsupervised learning because they can learn the distribution of sensory information. However, to perform a task, not only is it important to have sensory information, but also it is required to have information about the context in which the system is operating. In this sense, reinforcement learning is very powerful for interacting with the environment while performing a context-dependent task. The predominant motivation for this brief is to present a digital architecture for a spiking neural network (SNN) model with RL capability suitable for learning a context-dependent task. The proposed architecture is composed of hardware-friendly leaky integrate-and-firing (LIF) neurons and spike timing dependent plasticity (STDP)-based synapses implemented on a field programmable gate array (FPGA). Hardware synthesis and physical implementations show that the resulting circuits can faithfully reproduce the outcome of a learning task previously performed in both animal experimentation and computational modelings. Compared to the state-of-the-art neuromorphic FPGA circuits with context-dependent learning capability, our circuit fires 10.7 times fewer spikes, which accelerates learning 15 times, while requiring 16 times less energy. This is a significant step in achieving fast and low-energy SNNs with context-dependent learning ability on FPGAs.

dc.identifier.doi10.1109/tcsii.2020.2968588
dc.identifier.issn1549-7747
dc.identifier.scopus2-s2.0-85095754225
dc.identifier.urihttps://www.zora.uzh.ch/handle/20.500.14742/180785
dc.identifier.wos000604257500079
dc.language.isoeng
dc.subjectElectrical and Electronic Engineering
dc.subject.ddc570 Life sciences; biology
dc.title

Low-Energy and Fast Spiking Neural Network For Context-Dependent Learning on FPGA

dc.typearticle
dcterms.accessRightsinfo:eu-repo/semantics/closedAccess
dcterms.bibliographicCitation.journaltitleIEEE Transactions on Circuits and Systems. Part 2: Express Briefs
dcterms.bibliographicCitation.number11
dcterms.bibliographicCitation.originalpublishernameInstitute of Electrical and Electronics Engineers
dcterms.bibliographicCitation.pageend2701
dcterms.bibliographicCitation.pagestart2697
dcterms.bibliographicCitation.volume67
dspace.entity.typePublicationen
uzh.contributor.affiliationShahid Beheshti University, Institute of Neuroinformatics, Zurich, University of Zurich, ETH Zürich
uzh.contributor.affiliationShahid Beheshti University
uzh.contributor.affiliationInstitute of Neuroinformatics, Zurich, University of Zurich, ETH Zürich
uzh.contributor.affiliationJames Cook University, Australia
uzh.contributor.authorAsgari, Hajar
uzh.contributor.authorMaybodi, Babak Mazloom-Nezhad
uzh.contributor.authorPayvand, Melika
uzh.contributor.authorAzghadi, Mostafa Rahimi
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceYes
uzh.contributor.correspondenceNo
uzh.contributor.correspondenceNo
uzh.document.availabilityno_document
uzh.eprint.datestamp2021-02-15 17:30:26
uzh.eprint.lastmod2025-07-24 01:36:32
uzh.eprint.statusChange2021-02-15 17:30:26
uzh.harvester.ethNo
uzh.harvester.nbNo
uzh.jdb.eprintsId41858
uzh.oastatus.unpaywallclosed
uzh.oastatus.zoraClosed
uzh.publication.citationAsgari, Hajar; Maybodi, Babak Mazloom-Nezhad; Payvand, Melika; Azghadi, Mostafa Rahimi (2020). Low-Energy and Fast Spiking Neural Network For Context-Dependent Learning on FPGA. IEEE Transactions on Circuits and Systems. Part 2: Express Briefs, 67(11):2697-2701.
uzh.publication.originalworkoriginal
uzh.publication.publishedStatusfinal
uzh.scopus.impact23
uzh.scopus.subjectsElectrical and Electronic Engineering
uzh.workflow.doajuzh.workflow.doaj.false
uzh.workflow.eprintid200375
uzh.workflow.fulltextStatusnone
uzh.workflow.revisions39
uzh.workflow.rightsCheckkeininfo
uzh.workflow.sourceCrossRef:10.1109/tcsii.2020.2968588
uzh.workflow.statusarchive
uzh.wos.impact17
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