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A comparative study of maximum power point tracker approaches based on artificial neural network and fuzzy controllers
English
2018
International Journal of Physical Sciences
English
The performances of a photovoltaic (PV) module connected to a load through a conversion stage (chopper, inverter) are linked to the average electricity output including the delivered power. Nevertheless, the efficiency depends on atmospheric parameters as temperature, irradiance, and wind speed. To make electrical power available, Maximum Power Point Trackers (MPPT) algorithms are developed to keep up the PV module at optimal operating point with regard to climatic variations. This paper
doi:10.5897/ijps2017-4696
fatcat:gxxg3b4yorb2lih4cmjmbx35t4