Efficient parameter extraction in PV solar modules with the diligent crow search algorithm

Abstract In this study, we introduce a novel method that can be seamlessly integrated into existing metacognitive algorithms, significantly enhancing their performance during both exploitation and exploration phases. This method offers several advantages, including ease of implementation and simplic...

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Main Authors: Mostafa Jabari, Morteza Azimi Nasab, Mohammad Zand, Lilia Tightiz, Sanjeevikumar Padmanaban, Juan C. Vasquez Q
Format: Article
Language:English
Published: Springer 2024-12-01
Series:Discover Energy
Subjects:
Online Access:https://doi.org/10.1007/s43937-024-00063-3
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author Mostafa Jabari
Morteza Azimi Nasab
Mohammad Zand
Lilia Tightiz
Sanjeevikumar Padmanaban
Juan C. Vasquez Q
author_facet Mostafa Jabari
Morteza Azimi Nasab
Mohammad Zand
Lilia Tightiz
Sanjeevikumar Padmanaban
Juan C. Vasquez Q
author_sort Mostafa Jabari
collection DOAJ
description Abstract In this study, we introduce a novel method that can be seamlessly integrated into existing metacognitive algorithms, significantly enhancing their performance during both exploitation and exploration phases. This method offers several advantages, including ease of implementation and simplicity in calculations, which collectively accelerate convergence to the global minimum and enhance the algorithm's robustness. Notably, it effectively avoids local minima, ensuring the algorithm does not become trapped. Furthermore, this method eliminates the need for developing new metacognitive algorithms. To demonstrate its benefits, we apply this method to the crow search optimization algorithm (CSA), which is notably deficient in convergence speed, robustness, stability, and escaping local minima. Consequently, the enhanced algorithm is termed the diligent crow search optimization algorithm (DCSA). Additionally, we utilize the powerful DCSA algorithm to identify the parameters of solar cells, aiming to maximize power output from solar energy—a critical global concern. To evaluate the proposed algorithm, we tested it on various solar cell models, including one-diode, two-diode, and three-diode configurations, as well as several widely used solar panels such as SM55, KC200GT, and SW255. We also examined the impacts of radiation, temperature, and unknown parameters on these solar panels. The simulation results demonstrate that implementing the proposed method on the crow algorithm resulted in a 98% improvement in stability and a sevenfold increase in convergence speed.
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issn 2730-7719
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spelling doaj-art-a40322e03f854fd8af98796c5a879d2c2025-01-05T12:50:35ZengSpringerDiscover Energy2730-77192024-12-014112910.1007/s43937-024-00063-3Efficient parameter extraction in PV solar modules with the diligent crow search algorithmMostafa Jabari0Morteza Azimi Nasab1Mohammad Zand2Lilia Tightiz3Sanjeevikumar Padmanaban4Juan C. Vasquez Q5Faculty of Electrical Engineering, Sahand University of Technology TabrizDepartment of Electrical Engineering, Information Technology and Cybernetic, University of South-Eastern NorwayDepartment of Electrical Engineering, Information Technology and Cybernetic, University of South-Eastern NorwaySchool of Computing, Gachon UniversityDepartment of Electrical Engineering, Information Technology and Cybernetic, University of South-Eastern NorwayCenter of Reliable Power Electronics (CoRPE), Energy Engineering, Aalborg UniversityAbstract In this study, we introduce a novel method that can be seamlessly integrated into existing metacognitive algorithms, significantly enhancing their performance during both exploitation and exploration phases. This method offers several advantages, including ease of implementation and simplicity in calculations, which collectively accelerate convergence to the global minimum and enhance the algorithm's robustness. Notably, it effectively avoids local minima, ensuring the algorithm does not become trapped. Furthermore, this method eliminates the need for developing new metacognitive algorithms. To demonstrate its benefits, we apply this method to the crow search optimization algorithm (CSA), which is notably deficient in convergence speed, robustness, stability, and escaping local minima. Consequently, the enhanced algorithm is termed the diligent crow search optimization algorithm (DCSA). Additionally, we utilize the powerful DCSA algorithm to identify the parameters of solar cells, aiming to maximize power output from solar energy—a critical global concern. To evaluate the proposed algorithm, we tested it on various solar cell models, including one-diode, two-diode, and three-diode configurations, as well as several widely used solar panels such as SM55, KC200GT, and SW255. We also examined the impacts of radiation, temperature, and unknown parameters on these solar panels. The simulation results demonstrate that implementing the proposed method on the crow algorithm resulted in a 98% improvement in stability and a sevenfold increase in convergence speed.https://doi.org/10.1007/s43937-024-00063-3PhotovoltaicOptimizationRenewable energyCrow search optimization algorithm
spellingShingle Mostafa Jabari
Morteza Azimi Nasab
Mohammad Zand
Lilia Tightiz
Sanjeevikumar Padmanaban
Juan C. Vasquez Q
Efficient parameter extraction in PV solar modules with the diligent crow search algorithm
Discover Energy
Photovoltaic
Optimization
Renewable energy
Crow search optimization algorithm
title Efficient parameter extraction in PV solar modules with the diligent crow search algorithm
title_full Efficient parameter extraction in PV solar modules with the diligent crow search algorithm
title_fullStr Efficient parameter extraction in PV solar modules with the diligent crow search algorithm
title_full_unstemmed Efficient parameter extraction in PV solar modules with the diligent crow search algorithm
title_short Efficient parameter extraction in PV solar modules with the diligent crow search algorithm
title_sort efficient parameter extraction in pv solar modules with the diligent crow search algorithm
topic Photovoltaic
Optimization
Renewable energy
Crow search optimization algorithm
url https://doi.org/10.1007/s43937-024-00063-3
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AT liliatightiz efficientparameterextractioninpvsolarmoduleswiththediligentcrowsearchalgorithm
AT sanjeevikumarpadmanaban efficientparameterextractioninpvsolarmoduleswiththediligentcrowsearchalgorithm
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