Szczegóły publikacji

Opis bibliograficzny

Prediction of photovoltaic module characteristics by machine learning for renewable energy applications / Rafał Porowski, Robert Kowalik, Bartosz Szeląg, Diana Komendołowicz, Anita Białek, Agata Janaszek, Magdalena Piłat-Rożek, Ewa Łazuka, Tomasz GORZELNIK // Applied Sciences (Basel) [Dokument elektroniczny]. — Czasopismo elektroniczne ; ISSN  2076-3417 . — 2025 — vol. 15 iss. 16 art. no. 8868, s. 1–19. — Wymagania systemowe: Adobe Reader. — Bibliogr. s. 17–19, Abstr. — Publikacja dostępna online od: 2025-08-11

Autorzy (9)

  • Porowski Rafał
  • Kowalik Robert
  • Szeląg Bartosz
  • Komendołowicz Diana
  • Białek Anita
  • Janaszek Agata
  • Piłat-Rożek Magdalena
  • Łazuka Ewa
  • AGHGorzelnik Tomasz

Słowa kluczowe

sensitivity analysisphotovoltaicsneural networkssolar energystatistical modellingcurrent-voltage characteristicsmachine learning

Dane bibliometryczne

ID BaDAP166363
Data dodania do BaDAP2026-03-04
Tekst źródłowyURL
DOI10.3390/app15168868
Rok publikacji2025
Typ publikacjiartykuł w czasopiśmie
Otwarty dostęptak
Creative Commons
Czasopismo/seriaApplied Sciences (Basel)

Abstract

Photovoltaic (PV) modules undergo comprehensive testing to validate their electrical and thermal properties prior to market entry. These evaluations consist of durability and efficiency tests performed under realistic outdoor conditions with natural climatic influences, as well as in controlled laboratory settings. The overall performance of PV cells is affected by several factors, including solar irradiance, operating temperature, installation site parameters, prevailing weather, and shading effects. In the presented study, three distinct PV modules were analyzed using a sophisticated large-scale steady-state solar simulator. The current–voltage (I-V) characteristics of each module were precisely measured and subsequently scrutinized. To augment the analysis, a three-layer artificial neural network, specifically the multilayer perceptron (MLP), was developed. The experimental measurements, along with the outputs derived from the MLP model, served as the foundation for a comprehensive global sensitivity analysis (GSA). The experimental results revealed variances between the manufacturer’s declared values and those recorded during testing. The first module achieved a maximum power point that exceeded the manufacturer’s specification. Conversely, the second and third modules delivered power values corresponding to only 85–87% and 95–98% of their stated capacities, respectively. The global sensitivity analysis further indicated that while certain parameters, such as efficiency and the ratio of Voc/V, played a dominant role in influencing the power-voltage relationship, another parameter, U, exhibited a comparatively minor effect. These results highlight the significant potential of integrating machine learning techniques into the performance evaluation and predictive analysis of photovoltaic modules.

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