Adaptive neural network internal model control for PMSM speed regulation

In this paper, based on the combination of particle swarm optimization (PSO) algorithm and neural network (NN), an adaptive neural network internal model control (NNIMC) is designed for a permanent magnet synchronous motor (PMSM). Firstly, in order to accelerate the convergent speed and to prevent p...

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Main Authors: Zaineb Frijet, Ali Zribi, Mohamed Chtourou
Format: Article
Language:English
Published: ESRGroups 2018-06-01
Series:Journal of Electrical Systems
Subjects:
Online Access:https://journal.esrgroups.org/jes/papers/14_2_10.pdf
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spelling doaj-e27d8b79899349e2950c3fecbe7bf1762020-11-25T02:06:34ZengESRGroupsJournal of Electrical Systems1112-52091112-52092018-06-01142118126Adaptive neural network internal model control for PMSM speed regulationZaineb FrijetAli ZribiMohamed ChtourouIn this paper, based on the combination of particle swarm optimization (PSO) algorithm and neural network (NN), an adaptive neural network internal model control (NNIMC) is designed for a permanent magnet synchronous motor (PMSM). Firstly, in order to accelerate the convergent speed and to prevent problems of trapping in local minimum, PSO algorithm is applied in feedforward neural network to optimize the NN model's and the NN controller’s parameters. For the adaptation of the learning algorithm of the NN controller, gradient descent method is used, secondly, to achieve high-performance speed tracking. The robustness and effectiveness of the proposed PMSM drive scheme is confirmed by simulation tests in the MATLAB/SIMULINK. https://journal.esrgroups.org/jes/papers/14_2_10.pdfpmsmparticle swarm optimizationgradient descent methodneural networkinternal model control.
collection DOAJ
language English
format Article
sources DOAJ
author Zaineb Frijet
Ali Zribi
Mohamed Chtourou
spellingShingle Zaineb Frijet
Ali Zribi
Mohamed Chtourou
Adaptive neural network internal model control for PMSM speed regulation
Journal of Electrical Systems
pmsm
particle swarm optimization
gradient descent method
neural network
internal model control.
author_facet Zaineb Frijet
Ali Zribi
Mohamed Chtourou
author_sort Zaineb Frijet
title Adaptive neural network internal model control for PMSM speed regulation
title_short Adaptive neural network internal model control for PMSM speed regulation
title_full Adaptive neural network internal model control for PMSM speed regulation
title_fullStr Adaptive neural network internal model control for PMSM speed regulation
title_full_unstemmed Adaptive neural network internal model control for PMSM speed regulation
title_sort adaptive neural network internal model control for pmsm speed regulation
publisher ESRGroups
series Journal of Electrical Systems
issn 1112-5209
1112-5209
publishDate 2018-06-01
description In this paper, based on the combination of particle swarm optimization (PSO) algorithm and neural network (NN), an adaptive neural network internal model control (NNIMC) is designed for a permanent magnet synchronous motor (PMSM). Firstly, in order to accelerate the convergent speed and to prevent problems of trapping in local minimum, PSO algorithm is applied in feedforward neural network to optimize the NN model's and the NN controller’s parameters. For the adaptation of the learning algorithm of the NN controller, gradient descent method is used, secondly, to achieve high-performance speed tracking. The robustness and effectiveness of the proposed PMSM drive scheme is confirmed by simulation tests in the MATLAB/SIMULINK.
topic pmsm
particle swarm optimization
gradient descent method
neural network
internal model control.
url https://journal.esrgroups.org/jes/papers/14_2_10.pdf
work_keys_str_mv AT zainebfrijet adaptiveneuralnetworkinternalmodelcontrolforpmsmspeedregulation
AT alizribi adaptiveneuralnetworkinternalmodelcontrolforpmsmspeedregulation
AT mohamedchtourou adaptiveneuralnetworkinternalmodelcontrolforpmsmspeedregulation
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