Influence of the Random Data Sampling in Estimation of Wind Speed Resource: Case Study
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International Journal Renewable Energy Development
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Abstract
. In this study, statistical analysis is performed in order to characterize wind speeds distribution according to different samples
randomly drawn from wind speed data collected. The purpose of this study is to assess how random sampling influences the estimation
quality of the shape (k) and scale (c) parameters of a Weibull distribution function. Five stations were chosen in West Africa for the study,
namely: Accra Kotoka, Cotonou Cadjehoun, Kano Mallam Aminu, Lomé Tokoin and Ouagadougou airport. We used the energy factor
method (EPF) to compute shape and scale parameters. Statistical indicators used to assess estimation accuracy are the root mean square
error (RMSE) and relative percentage error (RPE). Study results show that good accuracy in Weibull parameters and power density
estimation is obtained with sampled wind speed data of 30% for Accra, 20% for Cotonou, 80% for Kano, 20% for Lomé, and 20% for
Ouagadougou site. This study showed that for wind potential assessing at a site, wind speed data random sampling is sufficient to
calculate wind power density. This is very useful in wind energy exploitation development.
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Salami, A.A., Ouedraogo, S., Kodjo, K. M., and Ajavon, A. S. A., (2022), Influence of the random data sampling in estimation of wind speed resource: Case study. Int. J. Renew. Energy Dev., 11(1), 133-143. https://doi.org/10.14710/ijred.2022.38511