Show simple record

dc.contributor.authorArdekani, Iman
dc.contributor.authorVarastehpour, Soheil
dc.contributor.authorSharifzadeh, Hamid
dc.date.accessioned2023-04-19T04:13:56Z
dc.date.available2023-04-19T04:13:56Z
dc.date.issued2022
dc.identifier.urihttps://hdl.handle.net/10652/5919
dc.description.abstractBees, as pollinators and producers of honey and medicinal products, play a crucial role in human life and environmental sustainability. Emerging Smart Beekeeping technologies utilise various methodologies in apiology, agricultural science, computer science, and electrical engineering. A significant part of these technologies includes data-driven and intelligent condition monitoring systems that can ideally imitate expert beekeepers. This paper shows that the acoustic signals generated by bees form an efficient and reliable source of knowledge about the beehive and its bee colony. Also, it proposes an acoustic signal processing system for intelligent and data-driven beehive monitoring. The proposed system includes acoustic data acquisition, noise reduction, feature extraction and machine learning techniques for inferential or predictive data analysis. This system can be used for different monitoring purposes; however, this paper focuses on queenless beehive identification. Finally, this paper reports a flexible experimental setup for developing and testing intelligent beehive monitoring systems.en_NZ
dc.language.isoenen_NZ
dc.publisherAcoustical Society of New Zealanden_NZ
dc.relation.urihttps://www.rothoblaas.com/research-and-development/conference-of-the-acoustical-society-of-new-zealand-2022en_NZ
dc.rightsAll rights reserveden_NZ
dc.subjectNew Zealanden_NZ
dc.subjectqueenless beehivesen_NZ
dc.subjectbeehive monitoring algorithmsen_NZ
dc.subjectApis Mellifera (honey bee)en_NZ
dc.subjectmodellingen_NZ
dc.subjectapiculture industryen_NZ
dc.titleAcoustic signal processing systems for intelligent beehive monitoringen_NZ
dc.typeConference Contribution - Paper in Published Proceedingsen_NZ
dc.date.updated2023-03-23T13:30:35Z
dc.rights.holderAuthorsen_NZ
dc.subject.marsden4611 Machine learningen_NZ
dc.subject.marsden3002 Agriculture, land and farm managementen_NZ
dc.identifier.bibliographicCitationArdekani, I. T., Pour, S., & Sharifzadeh, H. (2022). Acoustic signal processing systems for intelligent beehive monitoring. 2022 Conference of the Acoustical Society of New Zealand (pp. 1-4).en_NZ
unitec.publication.spage1en_NZ
unitec.publication.lpage4en_NZ
unitec.publication.title2022 Conference of the Acoustical Society of New Zealanden_NZ
unitec.conference.title2022 Conference of the Acoustical Society of New Zealanden_NZ
unitec.conference.orgAcoustical Society of New Zealanden_NZ
unitec.conference.locationWellington, New Zealanden_NZ
unitec.conference.sdate2022-10-31
unitec.conference.edate2022-11-02
unitec.peerreviewedyesen_NZ
dc.contributor.affiliationUnitec, Te Pūkengaen_NZ
unitec.identifier.roms69146en_NZ
unitec.identifier.roms69343en_NZ
unitec.identifier.roms69209
unitec.publication.placeAuckland, New Zealanden_NZ
unitec.institution.studyareaComputingen_NZ


Files in this item

Thumbnail

This item appears in

Show simple record