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Calculation of the energy provided by a PV generator. Comparative study: Conventional methods vs. artificial neural networks

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  • Almonacid, F.
  • Rus, C.
  • Pérez-Higueras, P.
  • Hontoria, L.

Abstract

The use of photovoltaics for electricity generation purposes has recorded one of the largest increases in the field of renewable energies. The energy production of a grid-connected PV system depends on various factors. In a wide sense, it is considered that the annual energy provided by a generator is directly proportional to the annual radiation incident on the plane of the generator and to the installed nominal power. However, a range of factors is influencing the expected outcome by reducing the generation of energy.

Suggested Citation

  • Almonacid, F. & Rus, C. & Pérez-Higueras, P. & Hontoria, L., 2011. "Calculation of the energy provided by a PV generator. Comparative study: Conventional methods vs. artificial neural networks," Energy, Elsevier, vol. 36(1), pages 375-384.
  • Handle: RePEc:eee:energy:v:36:y:2011:i:1:p:375-384
    DOI: 10.1016/j.energy.2010.10.028
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    References listed on IDEAS

    as
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