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dc.contributor.advisorBrandštetter, Pavel
dc.contributor.authorHo Dang, Sang
dc.date.accessioned2021-02-05T10:33:29Z
dc.date.available2021-02-05T10:33:29Z
dc.date.issued2020
dc.identifier.otherOSD002
dc.identifier.urihttp://hdl.handle.net/10084/142776
dc.description.abstractInduction motors, as well as electrical drives, are widely used in industry applications and consume a large number of electrical energy in the world. Energy saving, torque fast response and speed accuracy are main area in controlling induction motors. During last years, control methods have been developed to get these goals. Among these control methods, vector control (VC) is more and more popular because of high performance, energy saving, controlled acceleration, etc. However, in controlling AC machine drive by using VC, the motor speed is required. Together with the development of semiconductor technologies and digital signal processing (DSP), software instruments have been used to estimate speed, reducing hardware complexity and cost of a mechanical speed sensor. However, due to the nonlinearity, high order and multivariable properties of induction motor dynamics, the development of advanced induction motor control is still a challenging task. In this research proposal, basic description of the torque and flux control, as well as the theory and application of Particle Swarm Optimization (PSO) algorithms are reviewed in details. From that, a PSO algorithm for speed control is proposed to implement the pulse width modulation with a constant switching frequency. In addition, the sliding mode observer for speed estimation is investigated. The parameter sensitivity of the observer and controller are analyzed. Furthermore, the robustness of control and observer algorithms are also proved by Lyapunov’s criterion. Simulation models and control structures in MATLAB – Simulink environment are developed to verify the performance of the proposed algorithms. Finally, the experimental work in an induction motor drive controlled by eZdspTMF28335 is presented to compare with theoretical assumptions and simulation results.en
dc.description.abstractInduction motors, as well as electrical drives, are widely used in industry applications and consume a large number of electrical energy in the world. Energy saving, torque fast response and speed accuracy are main area in controlling induction motors. During last years, control methods have been developed to get these goals. Among these control methods, vector control (VC) is more and more popular because of high performance, energy saving, controlled acceleration, etc. However, in controlling AC machine drive by using VC, the motor speed is required. Together with the development of semiconductor technologies and digital signal processing (DSP), software instruments have been used to estimate speed, reducing hardware complexity and cost of a mechanical speed sensor. However, due to the nonlinearity, high order and multivariable properties of induction motor dynamics, the development of advanced induction motor control is still a challenging task. In this research proposal, basic description of the torque and flux control, as well as the theory and application of Particle Swarm Optimization (PSO) algorithms are reviewed in details. From that, a PSO algorithm for speed control is proposed to implement the pulse width modulation with a constant switching frequency. In addition, the sliding mode observer for speed estimation is investigated. The parameter sensitivity of the observer and controller are analyzed. Furthermore, the robustness of control and observer algorithms are also proved by Lyapunov’s criterion. Simulation models and control structures in MATLAB – Simulink environment are developed to verify the performance of the proposed algorithms. Finally, the experimental work in an induction motor drive controlled by eZdspTMF28335 is presented to compare with theoretical assumptions and simulation results.cs
dc.format90 stran : ilustrace
dc.format.extent7085031 bytes
dc.format.mimetypeapplication/pdf
dc.language.isoen
dc.publisherVysoká škola báňská – Technická univerzita Ostravacs
dc.subjectInduction motoren
dc.subjectparticle swarm optimizationen
dc.subjectvector controlen
dc.subjectstator resistance estimationen
dc.subjectrotor resistance estimationen
dc.subjectsensorless control.en
dc.subjectInduction motorcs
dc.subjectparticle swarm optimizationcs
dc.subjectvector controlcs
dc.subjectstator resistance estimationcs
dc.subjectrotor resistance estimationcs
dc.subjectsensorless control.cs
dc.titleApplications of Particle Swarm Optimization Algorithms in Control of Induction Motor Drivesen
dc.title.alternativeApplications of Particle Swarm Optimization Algorithms in Control of Induction Motor Drivescs
dc.typeDisertační prácecs
dc.identifier.signature202200014
dc.identifier.locationÚK/Sklad diplomových prací
dc.contributor.refereePalacký, Petr
dc.contributor.refereeFrančík, Ondřej
dc.contributor.refereeFedor, Pavol
dc.date.accepted2020-12-08
dc.thesis.degree-namePh.D.
dc.thesis.degree-levelDoktorský studijní programcs
dc.thesis.degree-grantorVysoká škola báňská – Technická univerzita Ostrava. Fakulta elektrotechniky a informatikycs
dc.description.department430 - Katedra elektronikycs
dc.thesis.degree-programElektrotechnikacs
dc.thesis.degree-branchElektrické stroje, přístroje a pohonycs
dc.description.resultvyhovělcs
dc.identifier.senderS2724
dc.identifier.thesisHOD0036_FEI_P2649_2642V004_2020
dc.rights.accessopenAccess


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