7 / 2018-04-19 03:37:59
Statistical Approach for the Optimum Selection of Photovoltaic Modules on a Specific Site
Probabilistic approach,Probability Density Functions,Cumulative Distribution Functions,PV Optimum Selection,PV Modelling,Capacity Factor
Draft Pending
Mohamed Aboushal / Middle East Oil Refinery Co.
Mohamed Moustafa / Alexandria University
Ibrahim ElArabawy / Alexandria University
This paper introduces a probabilistic approach (PA) for the optimum selection of various photovoltaic (PV) modules manufactured by different suppliers to select the most suited at a specific site location. This approach is based on fitting the probability distributions of the irradiance data measured at a specific hour of a typical day over a long term period (7 years). Goodness of fit test is employed to determine the best fitted probability density function (PDF) which is then used in the calculation of the average output power and capacity factor (CF) of each module. Thus, the module with the highest average CF over the year is therefore considered as the best suited module for the given site location. The source files of solar irradiance database are approved by the Egyptian Meteorological Authority. Detailed modeling of the PV system characteristics using MATLAB/Simulink has been introduced showing complete stepping procedures and respective results. The combination of the detailed PV modeling in line with the PA facilitates precise prediction of the best module in terms of output power under varying operating conditions and partial shading for the specified site.
Important Date
  • Conference Date

    Dec 29

    2018

    to

    Dec 30

    2018

  • Sep 01 2018

    Draft paper submission deadline

  • Oct 01 2018

    Draft Paper Acceptance Notification

  • Nov 01 2018

    Final Paper Deadline

  • Dec 30 2018

    Registration deadline

Organized By
Cairo University - Faculty of Engineering