An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant

Developments in solar technologies are making it possible to effectively exploit solar resources in several regions of Earth, including urban areas and regions with low solar irradiation intensity. Since power and heat are fundamental necessities for all users, f users, photovoltaic/thermal (PVT) te...

Full description

Saved in:
Bibliographic Details
Main Authors: Stefano Aneli, Giuseppe M. Tina, Bekkay Hajji, Safae Morgoum, Antonio Gagliano
Format: Article
Language:English
Published: SAGE Publishing 2025-03-01
Series:Energy Exploration & Exploitation
Online Access:https://doi.org/10.1177/01445987241301573
Tags: Add Tag
No Tags, Be the first to tag this record!
_version_ 1850222109986390016
author Stefano Aneli
Giuseppe M. Tina
Bekkay Hajji
Safae Morgoum
Antonio Gagliano
author_facet Stefano Aneli
Giuseppe M. Tina
Bekkay Hajji
Safae Morgoum
Antonio Gagliano
author_sort Stefano Aneli
collection DOAJ
description Developments in solar technologies are making it possible to effectively exploit solar resources in several regions of Earth, including urban areas and regions with low solar irradiation intensity. Since power and heat are fundamental necessities for all users, f users, photovoltaic/thermal (PVT) technology has emerged as a promising solution for sustainably-minded communities. Generally, the output electrical generation of a PVT system depends on the intermittent solar insolation, efficiency, and operating temperature of the photovoltaic (PV) cell. At the same time, thermal power also depends on collector thermal insulation and the temperature difference with the surroundings. Consequently, it is essential to predict and diagnose the PVT system's power to optimally utilize the collected solar energy. In recent years, intelligent techniques and approaches have been introduced to evaluate the performance of PVT systems. Artificial Intelligence (AI)-based methods have become prominent due to their capability of producing accurate predictions against the uncertainty and nonlinearity phenomena. This work presents an innovative application of AI for both the forecasting and the diagnostic of the performance of a PVT plant. The analyses performed are based on the experimental investigation conducted on the PVT system installed at the University of Catania campus. The outcomes of this study showed that the AI accurately predicted photovoltaic energy production and consequently, it can be used to detect periods of performance loss. From the test carried out in the real plant, it was seen that the use of the AI allows for prompt identification of malfunctioning in PVT plants can translate into avoid loss of over 5% of the electricity produced, and the total loss of thermal energy.
format Article
id doaj-art-8ccf12d19a644ce8932f1fbb67e1e6e3
institution OA Journals
issn 0144-5987
2048-4054
language English
publishDate 2025-03-01
publisher SAGE Publishing
record_format Article
series Energy Exploration & Exploitation
spelling doaj-art-8ccf12d19a644ce8932f1fbb67e1e6e32025-08-20T02:06:27ZengSAGE PublishingEnergy Exploration & Exploitation0144-59872048-40542025-03-014310.1177/01445987241301573An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT PlantStefano Aneli0Giuseppe M. Tina1Bekkay Hajji2Safae Morgoum3Antonio Gagliano4 , Catania, Italy , Catania, Italy , Oujda, Morocco , Oujda, Morocco , Catania, ItalyDevelopments in solar technologies are making it possible to effectively exploit solar resources in several regions of Earth, including urban areas and regions with low solar irradiation intensity. Since power and heat are fundamental necessities for all users, f users, photovoltaic/thermal (PVT) technology has emerged as a promising solution for sustainably-minded communities. Generally, the output electrical generation of a PVT system depends on the intermittent solar insolation, efficiency, and operating temperature of the photovoltaic (PV) cell. At the same time, thermal power also depends on collector thermal insulation and the temperature difference with the surroundings. Consequently, it is essential to predict and diagnose the PVT system's power to optimally utilize the collected solar energy. In recent years, intelligent techniques and approaches have been introduced to evaluate the performance of PVT systems. Artificial Intelligence (AI)-based methods have become prominent due to their capability of producing accurate predictions against the uncertainty and nonlinearity phenomena. This work presents an innovative application of AI for both the forecasting and the diagnostic of the performance of a PVT plant. The analyses performed are based on the experimental investigation conducted on the PVT system installed at the University of Catania campus. The outcomes of this study showed that the AI accurately predicted photovoltaic energy production and consequently, it can be used to detect periods of performance loss. From the test carried out in the real plant, it was seen that the use of the AI allows for prompt identification of malfunctioning in PVT plants can translate into avoid loss of over 5% of the electricity produced, and the total loss of thermal energy.https://doi.org/10.1177/01445987241301573
spellingShingle Stefano Aneli
Giuseppe M. Tina
Bekkay Hajji
Safae Morgoum
Antonio Gagliano
An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant
Energy Exploration & Exploitation
title An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant
title_full An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant
title_fullStr An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant
title_full_unstemmed An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant
title_short An AI-Based Approach for the Assessment of the Lost Efficiencies of a PVT Plant
title_sort ai based approach for the assessment of the lost efficiencies of a pvt plant
url https://doi.org/10.1177/01445987241301573
work_keys_str_mv AT stefanoaneli anaibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT giuseppemtina anaibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT bekkayhajji anaibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT safaemorgoum anaibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT antoniogagliano anaibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT stefanoaneli aibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT giuseppemtina aibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT bekkayhajji aibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT safaemorgoum aibasedapproachfortheassessmentofthelostefficienciesofapvtplant
AT antoniogagliano aibasedapproachfortheassessmentofthelostefficienciesofapvtplant