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Original scientific paper

https://doi.org/10.1080/00051144.2023.2222251

AI-based performance optimization of MPTT algorithms for photovoltaic systems

K. Gerard Joe Nigel ; Department of Robotics Engineering, Karunya Institute of Technology & Sciences, Coimbatore, India
R. Rajeswari ; Department of EEE, Government College of Technology Coimbatore, Coimbatore, India


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Abstract

Solar models have been drawing much attention in the contemporary electricity environment. Solar energy installations employ various MPPT techniques that generate the most energy. Increasing a solar (PV) device's energy effectiveness has become a key concern for scientists. Multiple MPPT approaches that collect the most power possible using a PV array have been researched. Both primary and intermediate-type procedures will be used in most procedures. The performance and convergence velocity of such a PV device become significant depending on its practical deployment under various conditions. The energy attributes of unit sections collectively serve as the primary energy-extracting elements in specific systems, dependent upon all interior and exterior elements. Considering specific external dynamical circumstances, traditional maximal power point tracing systems will not have the required translation efficacy. For assessing the overall effectiveness of the proposed intelligent maximal power point outlining methodology in partially shaded situations having significant and dynamical variations within ambient parameters, that study contrasts its efficacy using traditional maximal power point tracing techniques.

Keywords

MPPT method; PV modules; photovoltaics; dynamical partial shadowing

Hrčak ID:

315941

URI

https://hrcak.srce.hr/315941

Publication date:

13.6.2023.

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