A simplified model for the estimation of energy production of PV systems

作者: Niccolò Aste , Claudio Del Pero , Fabrizio Leonforte , Massimiliano Manfren

DOI: 10.1016/J.ENERGY.2013.07.004

关键词: Energy policySimulationProduction (economics)Field (computer science)Renewable energySolar energyPhotovoltaic systemTechnological evolutionVariety (cybernetics)EngineeringIndustrial engineering

摘要: Abstract The potential of solar energy is far higher than any other renewable source, although several limits exist. In detail the fundamental factors that must be analyzed by investors and policy makers are cost-effectiveness production PV power plants, respectively, for decision investment schemes strategies. Tools suitable to used even non-specialists, therefore becoming increasingly important. Many research development effort have been devoted this goal in recent years. study, a simplified model annual estimation can provide results with level accuracy comparable more sophisticated simulation tools from which it derives data. main advantage presented virtually anyone, without requiring specific field expertise. inherent related its empirical base, but methodology effectively reproduced future different spectrum data order assess, example, effect technological evolution on overall performance generation or establishing benchmarks much larger variety kinds plants technologies.

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