Intelligent reconfigurable photovoltaic system | Научно-инновационный портал СФУ

Intelligent reconfigurable photovoltaic system

Тип публикации: статья из журнала

Год издания: 2021

Идентификатор DOI: 10.3390/en14237969

Ключевые слова: grid-connected pv system, machine learning modeling, maximum power point tracking, pv module

Аннотация: The global maximum power point tracking of a PV array under partial shading represents a global optimization problem. Conventional maximum power point tracking algorithms fail to track the global maximum power point, and global optimization algorithms do not provide global maximum power point in real-time mode due to a slow convergence process. This paper presents an intelligent reconfigurable photovoltaic system on the basis of a modified fuzzy neural net that includes a convolutional block, recurrent networks, and fuzzy units. We tune the modified fuzzy neural net based on modified multi-dimension particle swarm optimization. Based on the processing of the sensors’ signals and the photovoltaic array’s image, the tuned modified fuzzy neural net generates an electrical interconnection matrix of a photovoltaic total-cross-tied array, which reaches the global maximum power point under non-homogeneous insolation. Thus, the intelligent reconfigurable photovoltaic system represents an effective machine learning application in a photovoltaic system. We demonstrate the advantages of the created intelligent reconfigurable photovoltaic system by simulations. The simulation results reveal robustness against photovoltaic system uncertainties and better performance and control speed of the proposed intelligent reconfigurable photovoltaic system under non-homogeneous insolation as compared to a GA-based reconfiguration total-cross-tied photovoltaic system. © 2021 by the authors. Licensee MDPI, Basel, Switzerland.

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Издание

Журнал: Energies

Выпуск журнала: Vol. 14, Is. 23

Номера страниц: 7969

ISSN журнала: 19961073

Издатель: MDPI

Персоны

  • Engel Ekaterina (Katanov State Univ Khakassia, Informat Technol & Syst Dept, Abakan 655017, Russia)
  • Kovalev Igor (Siberian Fed Univ, Dept Comp & Informat Technol, Krasnoyarsk 660000, Russia)
  • Testoyedov Nikolay (Acad MF Reshetnev Informat Satellite Syst, Krasnoyarsk 660000, Russia)
  • Engel Nikita E. (Katanov State Univ Khakassia, Informat Technol & Syst Dept, Abakan 655017, Russia)

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