Neuro-Fuzzy fault detection method for photovoltaic systems

نویسندگان

  • Luca Bonsignore
  • Mehrdad Davarifar
  • Abdelhamid Rabhi
  • Giuseppe M. Tina
  • Ahmed Elhajjaji
چکیده

Neuro-Fuzzy fault detection method for photovoltaic systems Luca Bonsignore, Mehrdad Davarifar, Abdelhamid Rabhi, Giuseppe M. Tina and Ahmed Elhajjaji DIEEI department – University of Catania, DIEEI department, viale A. Doria, 6, Catania 95129, Italy University of Picardie “Jules Verne”, Laboratory MIS, 33Rue Saint Leu, Amiens, 80039, France Abstract In this work we present a faults detection method for photovoltaic systems (PVS). This method is based on the calculation of sets of parameters of a PV module in different operating conditions, by means of a Neuro-Fuzzy approach. The PV system status is determined by evaluation and comparison of norms based on the aforementioned parameters, with threshold values. This intelligent system developed in Matlab&Simulink environment, consists on the study of the crucial information that the six parameters in normal and faulty condition contain. They are calculated using the I-V curves and synthesized by "hybrid" models. Results show that the diagnosis system is able to discern between normal and faulty operation conditions and with the same defective existence of noise and disturbances.

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تاریخ انتشار 2016