Using machine learning in photovoltaics to create smarter and cleaner energy generation systems: A comprehensive review
Using machine learning in photovoltaics to create smarter and cleaner energy generation systems: A comprehensive review
Photovoltaic (PV) technologies are expected to play an increasingly important role in future energy production. In parallel, machine learning has gained prominence because of a combination of factors such as advances in computational hardware, data collection and storage, and data-driven algorithms. Against this backdrop, we provide a comprehensive review of machine learning techniques applied to PV systems. First, conventional methods for modeling PV systems are introduced from both electrical and thermal perspectives. Then, the application of machine learning to the analysis of PV systems is discussed. We focus on reviewing the use of machine learning algorithms to predict performance and detect faults, and on discussing how machine learning can help humanity to achieve a cleaner environment in the worldwide drive towards carbon neutrality. This review also discusses the challenges to and future directions of using machine learning to analyze PV systems. A key conclusion is that the use of machine learning to analyze PV systems is still in its infancy, with many small-scale PV technologies, such as building integrated photovoltaic thermal systems (BIPV/T), not yet benefiting fully in terms of system efficiency and economic viability. The wider application of machine learning to PV systems could therefore forge a shorter path towards sustainable energy production.
Sohani, Ali
06a74ad3-4c3f-408b-aeac-fbc127ad0ea8
Sayyaadi, Hoseyn
99d66804-449e-494c-abd1-7aa44dd4cc61
Cornaro, Cristina
c454b35d-1774-4df4-8cb8-d21e1124669b
Shahverdian, Mohammad Hassan
a05c6386-7c65-4c6f-b61a-ec9aadf7d4af
Pierro, Marco
05929f95-d225-49b9-bc95-c8b43d7018dd
Moser, David
09874cab-348f-47f9-b018-1c2875d16998
Karimi, Nader
620646d6-27c9-4e1e-948f-f23e4a1e773a
Doranehgard, Mohammad Hossein
16a4c3f6-ced6-48fe-978d-d35561f6a7f4
Li, Larry K.B.
ac3686f6-8af6-45d3-b892-e3821d7595a2
1 September 2022
Sohani, Ali
06a74ad3-4c3f-408b-aeac-fbc127ad0ea8
Sayyaadi, Hoseyn
99d66804-449e-494c-abd1-7aa44dd4cc61
Cornaro, Cristina
c454b35d-1774-4df4-8cb8-d21e1124669b
Shahverdian, Mohammad Hassan
a05c6386-7c65-4c6f-b61a-ec9aadf7d4af
Pierro, Marco
05929f95-d225-49b9-bc95-c8b43d7018dd
Moser, David
09874cab-348f-47f9-b018-1c2875d16998
Karimi, Nader
620646d6-27c9-4e1e-948f-f23e4a1e773a
Doranehgard, Mohammad Hossein
16a4c3f6-ced6-48fe-978d-d35561f6a7f4
Li, Larry K.B.
ac3686f6-8af6-45d3-b892-e3821d7595a2
Sohani, Ali, Sayyaadi, Hoseyn, Cornaro, Cristina, Shahverdian, Mohammad Hassan, Pierro, Marco, Moser, David, Karimi, Nader, Doranehgard, Mohammad Hossein and Li, Larry K.B.
(2022)
Using machine learning in photovoltaics to create smarter and cleaner energy generation systems: A comprehensive review.
Journal of Cleaner Production, 364, [132701].
(doi:10.1016/j.jclepro.2022.132701).
Abstract
Photovoltaic (PV) technologies are expected to play an increasingly important role in future energy production. In parallel, machine learning has gained prominence because of a combination of factors such as advances in computational hardware, data collection and storage, and data-driven algorithms. Against this backdrop, we provide a comprehensive review of machine learning techniques applied to PV systems. First, conventional methods for modeling PV systems are introduced from both electrical and thermal perspectives. Then, the application of machine learning to the analysis of PV systems is discussed. We focus on reviewing the use of machine learning algorithms to predict performance and detect faults, and on discussing how machine learning can help humanity to achieve a cleaner environment in the worldwide drive towards carbon neutrality. This review also discusses the challenges to and future directions of using machine learning to analyze PV systems. A key conclusion is that the use of machine learning to analyze PV systems is still in its infancy, with many small-scale PV technologies, such as building integrated photovoltaic thermal systems (BIPV/T), not yet benefiting fully in terms of system efficiency and economic viability. The wider application of machine learning to PV systems could therefore forge a shorter path towards sustainable energy production.
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Published date: 1 September 2022
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Local EPrints ID: 509193
URI: http://eprints.soton.ac.uk/id/eprint/509193
ISSN: 0959-6526
PURE UUID: c631af15-d561-49b4-8748-7a9c4f5c97ec
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Date deposited: 12 Feb 2026 17:49
Last modified: 14 Feb 2026 03:18
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Contributors
Author:
Ali Sohani
Author:
Hoseyn Sayyaadi
Author:
Cristina Cornaro
Author:
Mohammad Hassan Shahverdian
Author:
Marco Pierro
Author:
David Moser
Author:
Nader Karimi
Author:
Mohammad Hossein Doranehgard
Author:
Larry K.B. Li
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