Title :
Bayes estimation of Inverse Weibull distribution for extreme wind speed prediction
Author :
Chiodo, E. ; Mazzanti, G. ; Karimian, M.
Author_Institution :
Dept. of Electr. Eng. & Inf. Technol., Univ. of Naples, Naples, Italy
Abstract :
Prediction of extreme values of wind speed is a key issue for both wind energy and wind tower safety assessment. The paper proposes a new method for such estimation, in the framework of safety assessment under extreme wind speed, based upon an adequate probabilistic model. The method assumes an Inverse Weibull probability distribution for the characterization of extreme wind speeds, and is developed by means of a novel Bayes estimation method. Such method uses a prior assessment of a given quantile of the wind speed by means of a “Negative LogLognormal” distribution. In the paper, by means of large set of numerical simulations relevant to typical wind speed data, the efficiency of the Bayes methods is discussed. Attention is focused in particular on the robustness of the estimates with respect to departures from the assumed wind speed probability distributions, assuming the Gumbel distribution as an alternative extreme value model.
Keywords :
Bayes methods; Weibull distribution; log normal distribution; poles and towers; safety; wind power plants; Bayes estimation method; Gumbel distribution; inverse Weibull probability distribution; negative log-lognormal distribution; numerical simulation; probabilistic model; wind energy; wind speed prediction; wind tower safety assessment; Atmospheric modeling; Estimation; Indexes; Numerical models; Reliability; Safety; Wind speed; Bayes estimation; Inverse Weibull distribution; Lognormal distribution; extreme values; safety; wind speed;
Conference_Titel :
Clean Electrical Power (ICCEP), 2015 International Conference on
Conference_Location :
Taormina
DOI :
10.1109/ICCEP.2015.7177587