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dc.contributor.author
 hal.structure.identifier
TRUONG, Phuoc Hoa
25826 Modélisation, Intelligence, Processus et Système [MIPS]
dc.contributor.author
 hal.structure.identifier
FLIELLER, Damien
407451 Groupe de Recherche en Electrotechnique et Electronique de Nancy [GREEN]
dc.contributor.author
 hal.structure.identifier
MERCKLE, Jean
25826 Modélisation, Intelligence, Processus et Système [MIPS]
dc.contributor.author
 hal.structure.identifier
STURTZER, Guy
50264 Laboratoire de Génie de la Conception [LGeco]
dc.contributor.author
 hal.structure.identifier
NGUYEN, Ngac Ky
13338 Laboratoire d’Électrotechnique et d’Électronique de Puissance - ULR 2697 [L2EP]
dc.date.accessioned2016
dc.date.available2016
dc.date.issued2016
dc.date.submitted2016
dc.identifier.urihttp://hdl.handle.net/10985/11199
dc.description.abstractThis paper proposes a new method based on Artificial Neural Networks for reducing the torque ripple in a non-sinusoidal Synchronous Reluctance Motor. The Lagrange optimization method is used to solve the problem of calculating optimal currents in the d-q frame. A neural control scheme is then proposed as an adaptive solution to derive the optimal stator currents giving a constant electromagnetic torque and minimizing the ohmic losses. Thanks to the online learning capacity of neural networks, the optimal currents can be obtained online in real time. With this neural control, each machine’s parameters estimation errors and current controller errors can be compensated. Simulation and experimental results are presented which confirm the validity of the proposed method.
dc.description.sponsorshipBourse de l'Ambassade de France au Vietnam
dc.language.isoen
dc.publisherElectric Power Systems Research, Elsevier
dc.rightsPost-print
dc.subjectNon-sinusoidal synchronous reluctance motor
dc.subjectTorque ripple
dc.subjectOptimal currents
dc.subjectLagrange optimization
dc.subjectAdaline
dc.subjectArtificial neural networks
dc.titleTorque ripple minimization in non-sinusoidal synchronous reluctance motors based on artificial neural networks
dc.typdocArticle dans une revue avec comité de lecture
dc.localisationCentre de Lille
dc.subject.halSciences de l'ingénieur: Energie électrique
ensam.audienceNon spécifiée
ensam.page37-45
ensam.journalTorque ripple minimization in non-sinusoidal synchronous reluctance motors based on artificial neural networks
ensam.volume140
ensam.peerReviewingOui
hal.statusunsent


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