LAPSE:2023.10337
Published Article

LAPSE:2023.10337
Hybrid Gray Wolf Optimization−Proportional Integral Based Speed Controllers for Brush-Less DC Motor
February 27, 2023
Abstract
For Brush-less DC motors to function better under various operating settings, such as constant load situations, variable loading situations, and variable set speed situations, speed controller design is essential. Conventional controllers including proportional integral controllers, frequently fall short of efficiency expectations and this is mostly because the characteristics of a Brush-less DC motor drive exhibit non linearity. This work proposes a hybrid gray wolf optimization and proportional integral controller for management of the speed in Brush-less DC motors to address this issue. For constant load conditions, varying load situations and varying set speed situations, the proposed controller’s efficiency is evaluated and contrasted with that of PID controller, PSO-PI controller, and ANFIS. In this study, two PI controller are used to get the more stability of the system based on tuning of their coefficients with meta heuristic method. The simulation findings show that Hybrid GWO-PI-based controllers are in every way superior to other controllers under consideration. In this study, four case studies are presented, and the best-case study was obtained 0.18619, 0.01928, 0.00030, and 0.01233 for RMSE, IAE, ITAE, and ISE respectively.
For Brush-less DC motors to function better under various operating settings, such as constant load situations, variable loading situations, and variable set speed situations, speed controller design is essential. Conventional controllers including proportional integral controllers, frequently fall short of efficiency expectations and this is mostly because the characteristics of a Brush-less DC motor drive exhibit non linearity. This work proposes a hybrid gray wolf optimization and proportional integral controller for management of the speed in Brush-less DC motors to address this issue. For constant load conditions, varying load situations and varying set speed situations, the proposed controller’s efficiency is evaluated and contrasted with that of PID controller, PSO-PI controller, and ANFIS. In this study, two PI controller are used to get the more stability of the system based on tuning of their coefficients with meta heuristic method. The simulation findings show that Hybrid GWO-PI-based controllers are in every way superior to other controllers under consideration. In this study, four case studies are presented, and the best-case study was obtained 0.18619, 0.01928, 0.00030, and 0.01233 for RMSE, IAE, ITAE, and ISE respectively.
Record ID
Keywords
brushless DC motor, GWO-PI, hybrid controller, PID
Subject
Suggested Citation
Younus SMY, Kutbay U, Rahebi J, Hardalaç F. Hybrid Gray Wolf Optimization−Proportional Integral Based Speed Controllers for Brush-Less DC Motor. (2023). LAPSE:2023.10337
Author Affiliations
Younus SMY: Electrical & Electronics Department, Gazi University, Ankara 06570, Turkey
Kutbay U: Electrical & Electronics Department, Gazi University, Ankara 06570, Turkey [ORCID]
Rahebi J: Software Engineering Department, Istanbul Topkapi University, Istanbul 34087, Turkey [ORCID]
Hardalaç F: Electrical & Electronics Department, Gazi University, Ankara 06570, Turkey
Kutbay U: Electrical & Electronics Department, Gazi University, Ankara 06570, Turkey [ORCID]
Rahebi J: Software Engineering Department, Istanbul Topkapi University, Istanbul 34087, Turkey [ORCID]
Hardalaç F: Electrical & Electronics Department, Gazi University, Ankara 06570, Turkey
Journal Name
Energies
Volume
16
Issue
4
First Page
1640
Year
2023
Publication Date
2023-02-07
ISSN
1996-1073
Version Comments
Original Submission
Other Meta
PII: en16041640, Publication Type: Journal Article
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LAPSE:2023.10337
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https://doi.org/10.3390/en16041640
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Feb 27, 2023
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