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MPPT control of wind turbines by direct adaptive fuzzy-PI controller and using ANN-PSO wind speed estimator

Author:
ساناز سبزواری
,
علی کریم پور
,
محمد منفرد
,
محمدباقر نقیبی سیستانی
,
sanaz sabzevari
,
Ali Karimpour
,
Mohammad Monfared
,
Mohammad Bagher Naghibi Sistani
Year
: 2017
Abstract: This paper proposes a maximum power point tracking (MPPT) technique based on the tip speed ratio control for small scale wind turbines (WTs). In this paper, artificial neural network based particle swarm optimization has been trained offline to learn the characteristic of the turbine power as a function of wind and machine speeds. Afterwards, it has been realized online to estimate the varying wind speed. It is essential to design a controller that can track the maximum peak of energy regardless of wind speed changes. Therefore, this work provides a novel robust direct adaptive fuzzy–Proportional-Integral (PI) controller during the MPPT process through tuning duty cycle of the boost converter for permanent magnet synchronous generator driven by a WT. The proposed method has successfully decreased the ripples of coefficient of power (Cp) which is the index of MPPT mode, under variations of the wind speed in comparison with conventional controller. Finally, a systematic analysis is presented which is in good agreement with simulation results, confirming the effectiveness of the proposed strategy.

I. INTRODUCTION
URI: http://libsearch.um.ac.ir:80/fum/handle/fum/3359370
Keyword(s): maximum power point tracking,direct adaptive fuzzy
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    MPPT control of wind turbines by direct adaptive fuzzy-PI controller and using ANN-PSO wind speed estimator

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contributor authorساناز سبزواریen
contributor authorعلی کریم پورen
contributor authorمحمد منفردen
contributor authorمحمدباقر نقیبی سیستانیen
contributor authorsanaz sabzevarifa
contributor authorAli Karimpourfa
contributor authorMohammad Monfaredfa
contributor authorMohammad Bagher Naghibi Sistanifa
date accessioned2020-06-06T13:32:54Z
date available2020-06-06T13:32:54Z
date issued2017
identifier urihttp://libsearch.um.ac.ir:80/fum/handle/fum/3359370
description abstractThis paper proposes a maximum power point tracking (MPPT) technique based on the tip speed ratio control for small scale wind turbines (WTs). In this paper, artificial neural network based particle swarm optimization has been trained offline to learn the characteristic of the turbine power as a function of wind and machine speeds. Afterwards, it has been realized online to estimate the varying wind speed. It is essential to design a controller that can track the maximum peak of energy regardless of wind speed changes. Therefore, this work provides a novel robust direct adaptive fuzzy–Proportional-Integral (PI) controller during the MPPT process through tuning duty cycle of the boost converter for permanent magnet synchronous generator driven by a WT. The proposed method has successfully decreased the ripples of coefficient of power (Cp) which is the index of MPPT mode, under variations of the wind speed in comparison with conventional controller. Finally, a systematic analysis is presented which is in good agreement with simulation results, confirming the effectiveness of the proposed strategy.

I. INTRODUCTION
en
languageEnglish
titleMPPT control of wind turbines by direct adaptive fuzzy-PI controller and using ANN-PSO wind speed estimatoren
typeJournal Paper
contenttypeExternal Fulltext
subject keywordsmaximum power point trackingen
subject keywordsdirect adaptive fuzzyen
journal titleJournal of Renewable and Sustainable Energyfa
pages13302-13314
journal volume9
journal issue1
identifier linkhttps://profdoc.um.ac.ir/paper-abstract-1060447.html
identifier articleid1060447
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