Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology

In recent years, extensive and expensive research has been conducted on solar energy systems. Studying and investigating solar panel output requires considerable experimental work, increasing both time and costs. This research aims to reduce these by integrating fuzzy logic with Response Surface Met...

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Main Authors: Muataz Al Hazza, Hussain Attia, Khaled Hossin
Format: Article
Language:English
Published: Materials and Energy Research Center (MERC) 2024-07-01
Series:Journal of Renewable Energy and Environment
Subjects:
Online Access:https://www.jree.ir/article_201921_2dd6cfe32dc4908524514c6f247fadbb.pdf
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author Muataz Al Hazza
Hussain Attia
Khaled Hossin
author_facet Muataz Al Hazza
Hussain Attia
Khaled Hossin
author_sort Muataz Al Hazza
collection DOAJ
description In recent years, extensive and expensive research has been conducted on solar energy systems. Studying and investigating solar panel output requires considerable experimental work, increasing both time and costs. This research aims to reduce these by integrating fuzzy logic with Response Surface Methodology (RSM). In fuzzy models, data inputs are processed through membership functions and rules based on expert knowledge or assumptions. These rules generate outputs, which are then defuzzified into actionable decisions. These outputs were used as inputs in the RSM to develop a statistical prediction model. The model developed is based on three inputs: light intensity, temperature, and humidity, with one output: power. The fuzzy model was processed assuming two levels for humidity, temperature, and light intensity. The RSM was designed using data extracted from the fuzzy system for seventeen runs, using the Box-Behnken Design (BBD) as part of the RSM with Design-Expert software. The advantage of using BBD is that it avoids extreme corners in the design. The results were analyzed using Analysis of Variance (ANOVA). The ANOVA table showed significant results for the quadratic regression model. The results were compared with real data using random samples of twenty readings each for two-time intervals. The validation showed variations averaging 7.50% and 5.53%.
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publisher Materials and Energy Research Center (MERC)
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spelling doaj-art-b56b70f0f9d84d48a519d23c79827fe72025-08-20T01:53:10ZengMaterials and Energy Research Center (MERC)Journal of Renewable Energy and Environment2423-55472423-74692024-07-0111312012610.30501/jree.2024.445748.1857201921Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface MethodologyMuataz Al Hazza0Hussain Attia1Khaled Hossin2Department of Mechanical and Industrial Engineering, American University of Ras Al Khaimah, P. O. Box: 72603, Ras Al Khaimah, UAE.Department of Electrical, Electronics & Communications Engineering, American University of Ras Al Khaimah, P. O. Box: 72603, Ras Al Khaimah, UAE.Department of Mechanical and Industrial Engineering, American University of Ras Al Khaimah, P. O. Box: 72603, Ras Al Khaimah, UAE.In recent years, extensive and expensive research has been conducted on solar energy systems. Studying and investigating solar panel output requires considerable experimental work, increasing both time and costs. This research aims to reduce these by integrating fuzzy logic with Response Surface Methodology (RSM). In fuzzy models, data inputs are processed through membership functions and rules based on expert knowledge or assumptions. These rules generate outputs, which are then defuzzified into actionable decisions. These outputs were used as inputs in the RSM to develop a statistical prediction model. The model developed is based on three inputs: light intensity, temperature, and humidity, with one output: power. The fuzzy model was processed assuming two levels for humidity, temperature, and light intensity. The RSM was designed using data extracted from the fuzzy system for seventeen runs, using the Box-Behnken Design (BBD) as part of the RSM with Design-Expert software. The advantage of using BBD is that it avoids extreme corners in the design. The results were analyzed using Analysis of Variance (ANOVA). The ANOVA table showed significant results for the quadratic regression model. The results were compared with real data using random samples of twenty readings each for two-time intervals. The validation showed variations averaging 7.50% and 5.53%.https://www.jree.ir/article_201921_2dd6cfe32dc4908524514c6f247fadbb.pdfphotovoltaic systemstatistical predictive modelfuzzy logic designresponse surface methodologybox-behnken design
spellingShingle Muataz Al Hazza
Hussain Attia
Khaled Hossin
Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology
Journal of Renewable Energy and Environment
photovoltaic system
statistical predictive model
fuzzy logic design
response surface methodology
box-behnken design
title Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology
title_full Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology
title_fullStr Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology
title_full_unstemmed Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology
title_short Enhancing Photovoltaic System Performance Prediction: A Synergistic Approach with Fuzzy Logic and Response Surface Methodology
title_sort enhancing photovoltaic system performance prediction a synergistic approach with fuzzy logic and response surface methodology
topic photovoltaic system
statistical predictive model
fuzzy logic design
response surface methodology
box-behnken design
url https://www.jree.ir/article_201921_2dd6cfe32dc4908524514c6f247fadbb.pdf
work_keys_str_mv AT muatazalhazza enhancingphotovoltaicsystemperformancepredictionasynergisticapproachwithfuzzylogicandresponsesurfacemethodology
AT hussainattia enhancingphotovoltaicsystemperformancepredictionasynergisticapproachwithfuzzylogicandresponsesurfacemethodology
AT khaledhossin enhancingphotovoltaicsystemperformancepredictionasynergisticapproachwithfuzzylogicandresponsesurfacemethodology