Dynamic performance evaluation of photovoltaic power plant by stochastic hybrid fault tree automaton model
Articolo
Data di Pubblicazione:
2018
Abstract:
The contribution of renewable energies to the reduction of the impact of fossil fuels sources
and especially energy supply in remote areas has occupied a role more and more important during
last decades. The estimation of renewable power plants performances by means of deterministic
models is usually limited by the innate variability of the energy resources. The accuracy of energy
production forecasting results may be inadequate. An accurate feasibility analysis requires taking into
account the randomness of the primary resource operations and the effect of component failures in the
energy production process. This paper treats a novel approach to the estimation of energy production
in a real photovoltaic power plant by means of dynamic reliability analysis based on Stochastic
Hybrid Fault Tree Automaton (SHyFTA). The comparison between real data, deterministic model and
SHyFTA model confirm how the latter better estimate energy production than deterministic model.
Tipologia CRIS:
14.a.1 Articolo su rivista
Keywords:
Aging; Monte Carlo simulation; Photovoltaic power plant; Renewable energy; Stochastic hybrid automaton; Computer Science (all); Renewable Energy, Sustainability and the Environment; Energy Engineering and Power Technology; Energy (miscellaneous)
Elenco autori:
Chiacchio, Ferdinando; Famoso, Fabio; D'Urso, Diego; Brusca, Sebastian; Aizpurua, Jose Ignacio; Cedola, Luca
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