Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation

Abstract By increasing the photovoltaic (PV) systems capacity worldwide, the requirement for a fast, reliable, and efficient control system is becoming more crucial. To this end, model predictive control (MPC) is known as one of the potential solutions. Although MPC is an easily implemented control...

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Main Authors: Amin Rasoulian, Hadi Saghafi, Mohammadali Abbasian, Majid Delshad
Format: Article
Language:English
Published: Wiley 2023-10-01
Series:IET Renewable Power Generation
Subjects:
Online Access:https://doi.org/10.1049/rpg2.12822
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author Amin Rasoulian
Hadi Saghafi
Mohammadali Abbasian
Majid Delshad
author_facet Amin Rasoulian
Hadi Saghafi
Mohammadali Abbasian
Majid Delshad
author_sort Amin Rasoulian
collection DOAJ
description Abstract By increasing the photovoltaic (PV) systems capacity worldwide, the requirement for a fast, reliable, and efficient control system is becoming more crucial. To this end, model predictive control (MPC) is known as one of the potential solutions. Although MPC is an easily implemented control system, it needs a high computational complexity due to the dependency on solving an iterative optimization problem. To overcome this problem, this study develops an artificial intelligence‐based on one‐dimensional convolutional neural network (1D‐CNN) based MPCs. While 1D‐CNN benefits from the inherent strong feature extraction/selection capability and lower computational complexity than other deep methods, it still cannot properly track the dynamic changes due to fixed weights during the training process. Thus, this paper integrates the dynamic weighting training process and proposed dynamic weighing 1D‐CNN for the implementation of intelligent MPC for the PVs. The numerical results based on different load types show an efficient performance of the proposed system and verify the superiority of the proposed method in comparison with the conventional MPC and several state‐of‐the‐arts shallow and deep based MPC for the PVs in terms of the total harmonic distortion (THD) and frequency switching.
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spelling doaj-art-fd0bf3ab5d4347f3bb76413384d2e44d2025-08-20T02:55:07ZengWileyIET Renewable Power Generation1752-14161752-14242023-10-0117133151316210.1049/rpg2.12822Deep learning based model predictive control of active filter inverter as interface for photovoltaic generationAmin Rasoulian0Hadi Saghafi1Mohammadali Abbasian2Majid Delshad3Department of Electrical EngineeringIsfahan (Khorasgan) Branch, Islamic Azad UniversityIsfahanIranDepartment of Electrical EngineeringIsfahan (Khorasgan) Branch, Islamic Azad UniversityIsfahanIranDepartment of Electrical EngineeringIsfahan (Khorasgan) Branch, Islamic Azad UniversityIsfahanIranDepartment of Electrical EngineeringIsfahan (Khorasgan) Branch, Islamic Azad UniversityIsfahanIranAbstract By increasing the photovoltaic (PV) systems capacity worldwide, the requirement for a fast, reliable, and efficient control system is becoming more crucial. To this end, model predictive control (MPC) is known as one of the potential solutions. Although MPC is an easily implemented control system, it needs a high computational complexity due to the dependency on solving an iterative optimization problem. To overcome this problem, this study develops an artificial intelligence‐based on one‐dimensional convolutional neural network (1D‐CNN) based MPCs. While 1D‐CNN benefits from the inherent strong feature extraction/selection capability and lower computational complexity than other deep methods, it still cannot properly track the dynamic changes due to fixed weights during the training process. Thus, this paper integrates the dynamic weighting training process and proposed dynamic weighing 1D‐CNN for the implementation of intelligent MPC for the PVs. The numerical results based on different load types show an efficient performance of the proposed system and verify the superiority of the proposed method in comparison with the conventional MPC and several state‐of‐the‐arts shallow and deep based MPC for the PVs in terms of the total harmonic distortion (THD) and frequency switching.https://doi.org/10.1049/rpg2.12822deep learningmodel predictive controlone‐dimensional convolutional neural networkphotovoltaic system
spellingShingle Amin Rasoulian
Hadi Saghafi
Mohammadali Abbasian
Majid Delshad
Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
IET Renewable Power Generation
deep learning
model predictive control
one‐dimensional convolutional neural network
photovoltaic system
title Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
title_full Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
title_fullStr Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
title_full_unstemmed Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
title_short Deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
title_sort deep learning based model predictive control of active filter inverter as interface for photovoltaic generation
topic deep learning
model predictive control
one‐dimensional convolutional neural network
photovoltaic system
url https://doi.org/10.1049/rpg2.12822
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AT hadisaghafi deeplearningbasedmodelpredictivecontrolofactivefilterinverterasinterfaceforphotovoltaicgeneration
AT mohammadaliabbasian deeplearningbasedmodelpredictivecontrolofactivefilterinverterasinterfaceforphotovoltaicgeneration
AT majiddelshad deeplearningbasedmodelpredictivecontrolofactivefilterinverterasinterfaceforphotovoltaicgeneration