Title of article :
Smart Maintenance with Regression Analysis for Efficiency Improvement in Photovoltaic Energy Systems
Author/Authors :
Ay ، İlker Department of Alternative Energy Resources Technology Program - Hacettepe Ankara Chamber of Industry 1st Organized Industrial Zone Vocational School - Hacettepe University , Kademli ، Murat Department of Alternative Energy Resources Technology Program - Hacettepe Ankara Chamber of Industry 1st Organized Industrial Zone Vocational School - Hacettepe University , Savaş ، Serkan , Karellas ، Sotirios National Technical University of Athens , Markopoulos ، Angelos National Technical University of Athens , Hatzilau ، Christina-Stavroula National Technical University of Athens , Devlin ، Philip North West Regional College , Duşbudak ، Hüseyin , Arslan ، Ali Samet , Koç ، Mustafa Yenikent Ahmet Çiçek Vocational and Technical Anatolian High School , Duraklar ، Kazım Private Ankara Chamber of Industry Technical College Vocational and Technical Anatolian High School , Sunal ، Kamil Ankara Chamber of Industry 1st Organized Industrial Zone Management , Ozer ، Mathieu Mehmet Oryx-Data Incubator EURL
From page :
1663
To page :
1679
Abstract :
This research had the overarching goal of optimizing maintenance intervals and reducing the maintenance workload by enhancing accessibility for individuals lacking technical expertise in the upkeep of photovoltaic systems, with a particular focus on rooftop applications. The study achieved this objective by employing a linear regression algorithm to analyse climatic parameters such as wind speed, humidity, ambient temperature, and light intensity, collected from the installation site of a photovoltaic solar energy system. Simultaneously, the current and voltage values obtained from the system were also examined. This analysis not only facilitated the determination of power generation within the system but also enabled real-time detection of potential issues such as pollution, shadowing, bypass, and panel faults on the solar panels. Additionally, an artificial intelligence-supported interface was developed within the study, attributing any decline in power generation to specific causes and facilitating prompt intervention to rectify malfunctions, thereby ensuring more efficient system operation.
Keywords :
Photovoltaic , Efficiency , Solar energy system , Maintenance and repair , regression analysis
Journal title :
Journal of Solar Energy Research
Journal title :
Journal of Solar Energy Research
Record number :
2777333
Link To Document :
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