Author/Authors :
Fritz Zaversky a، نويسنده , , ?، نويسنده , , Javier Garc?´a-Barberena a، نويسنده , , Marcelino Sa´nchez *، نويسنده , , David Astrain b، نويسنده ,
Abstract :
In this work, an uncertainty and sensitivity analysis for the annual performance of a parabolic trough collector plant based on a probabilistic
modeling approach of the solar-to-thermal energy conversion process has been accomplished. Realistic probability functions
have been assigned to the most relevant solar field performance parameters. The Latin Hypercube sampling method has been used to
create equal probable parameter combinations. The so obtained sample matrix has been used to run multiple annual electricity yield
simulations in SimulCET, a validated parabolic trough collector plant simulation software, developed by the National Renewable
Energy Center (CENER) in Spain Garcı´a-Barberena et al., 2012. This procedure has led to a representative distribution for the annual
plant performance, given the uncertainty in the input data. For this study the parabolic trough power plant model has been run in solar
driven operation mode, without the use of thermal storage or fossil fuel back up. While being aware of the great influence of the solar
irradiation on the power plant performance, only one single reference meteorological year has been used as solar input data. This has
been done in order to emphasize the influence of technical design- as well as solar field maintenance parameters, factors that can be controlled
or affected by mankind. In order to assess and rank the impact of each varied model parameter a multiple linear regression has
been performed. The standardized regression coefficients, the Pearson correlation coefficients as well as the coefficient of multiple determination
R2 are discussed. Varied parameters are the collector mirror reflectance, the collector mirror cleanliness factor, the collector
glass tube transmittance, the collector receiver tube absorptance, and the collector receiver tube heat loss characteristic. Based on existing
and published bibliography, a set of parameter distributions and ranges have been chosen for this work and the simulation results show
that the cleanliness factor has the strongest influence on the model output. The cleanliness is followed (in this sequence) by the mirror
reflectance, the glass tube transmittance, the receiver tube absorptance and, finally, by the receiver tube heat loss characteristic.
2012 Elsevier Ltd. All rights reserved
Keywords :
CSP , Parabolic trough collector , probabilistic modeling , Latin hypercube sampling