Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller

Abstract Adaptive neuro‐fuzzy inference system (ANFIS) technique is a significant alternative of research which is structured with a combination of two soft‐computing strategies of fuzzy logic and artificial neural network. The design of ANFIS controller for a single‐phase full‐bridge inverter with...

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Main Authors: Seyyed Amirhosein Saadat, Seyyed Morteza Ghamari, Hasan Mollaee, Fatemeh Khavari
Format: Article
Language:English
Published: Wiley 2021-08-01
Series:IET Power Electronics
Online Access:https://doi.org/10.1049/pel2.12162
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spelling doaj-ec93e1c7cb924326ac250a0687a760d72021-08-09T08:40:35ZengWileyIET Power Electronics1755-45351755-45432021-08-0114111960197210.1049/pel2.12162Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controllerSeyyed Amirhosein Saadat0Seyyed Morteza Ghamari1Hasan Mollaee2Fatemeh Khavari3Control Faculty Shahroud University Semnan Shahrood IranControl Faculty Shahroud University Semnan Shahrood IranControl Faculty Shahroud University Semnan Shahrood IranControl Faculty Shahroud University Semnan Shahrood IranAbstract Adaptive neuro‐fuzzy inference system (ANFIS) technique is a significant alternative of research which is structured with a combination of two soft‐computing strategies of fuzzy logic and artificial neural network. The design of ANFIS controller for a single‐phase full‐bridge inverter with pulse width modulation is demonstrated here in the presence of different disturbances. Moreover, an LC filter is designed to decrease the disturbing harmonics which the stability of the filter can be noted as an important issue. Based on the fuzzy C‐mean clustering method used for decreasing fuzzy rules, the computational burden has been improved resulting in faster dynamic performance. This method considers the system as a black‐box structure which omits the need for an exact model of system and can be an appropriate technique for ill‐defined systems. Additionally, to deal with the variations of supply DC voltage, a fractional‐order proportional‐integral‐derivative controller is designed which is tuned by particle swarm optimiser algorithm and can generate a sinusoidal reference for the system input. This double‐loop control technique is known as cascade control strategy. It can be seen that ANFIS scheme provides appropriate results with less computational burden and simple structure with optimised responses in challenging conditions. The capability of the proposed method is validated for different operating conditions through simulation and experimental results.https://doi.org/10.1049/pel2.12162
collection DOAJ
language English
format Article
sources DOAJ
author Seyyed Amirhosein Saadat
Seyyed Morteza Ghamari
Hasan Mollaee
Fatemeh Khavari
spellingShingle Seyyed Amirhosein Saadat
Seyyed Morteza Ghamari
Hasan Mollaee
Fatemeh Khavari
Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller
IET Power Electronics
author_facet Seyyed Amirhosein Saadat
Seyyed Morteza Ghamari
Hasan Mollaee
Fatemeh Khavari
author_sort Seyyed Amirhosein Saadat
title Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller
title_short Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller
title_full Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller
title_fullStr Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller
title_full_unstemmed Adaptive neuro‐fuzzy inference systems (ANFIS) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order PID voltage controller
title_sort adaptive neuro‐fuzzy inference systems (anfis) controller design on single‐phase full‐bridge inverter with a cascade fractional‐order pid voltage controller
publisher Wiley
series IET Power Electronics
issn 1755-4535
1755-4543
publishDate 2021-08-01
description Abstract Adaptive neuro‐fuzzy inference system (ANFIS) technique is a significant alternative of research which is structured with a combination of two soft‐computing strategies of fuzzy logic and artificial neural network. The design of ANFIS controller for a single‐phase full‐bridge inverter with pulse width modulation is demonstrated here in the presence of different disturbances. Moreover, an LC filter is designed to decrease the disturbing harmonics which the stability of the filter can be noted as an important issue. Based on the fuzzy C‐mean clustering method used for decreasing fuzzy rules, the computational burden has been improved resulting in faster dynamic performance. This method considers the system as a black‐box structure which omits the need for an exact model of system and can be an appropriate technique for ill‐defined systems. Additionally, to deal with the variations of supply DC voltage, a fractional‐order proportional‐integral‐derivative controller is designed which is tuned by particle swarm optimiser algorithm and can generate a sinusoidal reference for the system input. This double‐loop control technique is known as cascade control strategy. It can be seen that ANFIS scheme provides appropriate results with less computational burden and simple structure with optimised responses in challenging conditions. The capability of the proposed method is validated for different operating conditions through simulation and experimental results.
url https://doi.org/10.1049/pel2.12162
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