Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization

The quality of torque of induction motors plays an important role in many electrical drive systems. Model predictive torque control has been a good alternative to conventional direct torque control for improving the torque qualities. Recently, some researchers tried to modify the model predictive to...

Full description

Bibliographic Details
Main Authors: Te-Jen Su, Tung-Yeh Tsou, Shih-Ming Wang, Tsung-Ying Li, Hong-Quan Vu
Format: Article
Language:English
Published: SAGE Publishing 2016-10-01
Series:Advances in Mechanical Engineering
Online Access:https://doi.org/10.1177/1687814016676465
id doaj-b887492cd6604fb6ae69516e2f516601
record_format Article
spelling doaj-b887492cd6604fb6ae69516e2f5166012020-11-25T03:40:42ZengSAGE PublishingAdvances in Mechanical Engineering1687-81402016-10-01810.1177/1687814016676465Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimizationTe-Jen SuTung-Yeh TsouShih-Ming WangTsung-Ying LiHong-Quan VuThe quality of torque of induction motors plays an important role in many electrical drive systems. Model predictive torque control has been a good alternative to conventional direct torque control for improving the torque qualities. Recently, some researchers tried to modify the model predictive torque control with other principles such as minimize torque ripple, optimize duty cycle, in an effort to get smaller torque ripples. However, according to the reported results the torque ripples are still significant. In this article, model predictive torque control based on particle swarm optimization is proposed to modify the model predictive torque control in order to improve the control qualities, especially the steady-state torque ripples. The key idea of this approach is using particle swarm optimization to minimize the cost function. The optimal voltage vector is implemented by space vector modulation technique. In addition, the control performance of model predictive torque control–particle swarm optimization combination is also compared with that of model predictive torque control–genetic algorithm to justify the effectiveness of our method. The presented simulations prove the better torque and phase currents quality at steady state of this approach.https://doi.org/10.1177/1687814016676465
collection DOAJ
language English
format Article
sources DOAJ
author Te-Jen Su
Tung-Yeh Tsou
Shih-Ming Wang
Tsung-Ying Li
Hong-Quan Vu
spellingShingle Te-Jen Su
Tung-Yeh Tsou
Shih-Ming Wang
Tsung-Ying Li
Hong-Quan Vu
Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
Advances in Mechanical Engineering
author_facet Te-Jen Su
Tung-Yeh Tsou
Shih-Ming Wang
Tsung-Ying Li
Hong-Quan Vu
author_sort Te-Jen Su
title Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
title_short Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
title_full Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
title_fullStr Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
title_full_unstemmed Torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
title_sort torque ripple reduction of induction motor based on a hybrid method of model predictive torque control and particle swarm optimization
publisher SAGE Publishing
series Advances in Mechanical Engineering
issn 1687-8140
publishDate 2016-10-01
description The quality of torque of induction motors plays an important role in many electrical drive systems. Model predictive torque control has been a good alternative to conventional direct torque control for improving the torque qualities. Recently, some researchers tried to modify the model predictive torque control with other principles such as minimize torque ripple, optimize duty cycle, in an effort to get smaller torque ripples. However, according to the reported results the torque ripples are still significant. In this article, model predictive torque control based on particle swarm optimization is proposed to modify the model predictive torque control in order to improve the control qualities, especially the steady-state torque ripples. The key idea of this approach is using particle swarm optimization to minimize the cost function. The optimal voltage vector is implemented by space vector modulation technique. In addition, the control performance of model predictive torque control–particle swarm optimization combination is also compared with that of model predictive torque control–genetic algorithm to justify the effectiveness of our method. The presented simulations prove the better torque and phase currents quality at steady state of this approach.
url https://doi.org/10.1177/1687814016676465
work_keys_str_mv AT tejensu torqueripplereductionofinductionmotorbasedonahybridmethodofmodelpredictivetorquecontrolandparticleswarmoptimization
AT tungyehtsou torqueripplereductionofinductionmotorbasedonahybridmethodofmodelpredictivetorquecontrolandparticleswarmoptimization
AT shihmingwang torqueripplereductionofinductionmotorbasedonahybridmethodofmodelpredictivetorquecontrolandparticleswarmoptimization
AT tsungyingli torqueripplereductionofinductionmotorbasedonahybridmethodofmodelpredictivetorquecontrolandparticleswarmoptimization
AT hongquanvu torqueripplereductionofinductionmotorbasedonahybridmethodofmodelpredictivetorquecontrolandparticleswarmoptimization
_version_ 1724533244504834048