The Compound Inverse Rayleigh as an Extreme Wind Speed Distribution and Its Bayes Estimation

Author:

Chiodo Elio,Fantauzzi Maurizio,Mazzanti GiovanniORCID

Abstract

This paper proposes the Compound Inverse Rayleigh distribution as a proper model for the characterization of the probability distribution of extreme values of wind-speed. This topic is gaining interest in the field of renewable generation, from the viewpoint of assessing both wind power production and wind-tower mechanical reliability and safety. The first part of the paper illustrates such model starting from its origin as a generalization of the Inverse Rayleigh model by means of a continuous mixture generated by a Gamma distribution on the scale parameter, which gives rise to its name. Moreover, its validity for interpreting different field data is illustrated resorting to real wind speed data. Then, a novel Bayes approach for the estimation of such extreme wind-speed model is proposed. The method relies upon the assessment of prior information in a practical way, that should be easily available to system engineers. The results of a large set of numerical simulations—using typical values of wind-speed parameters—are reported to illustrate the efficiency and the accuracy of the proposed method. The validity of the approach is also verified in terms of its robustness with respect to significant differences compared to the assumed prior information.

Publisher

MDPI AG

Subject

Energy (miscellaneous),Energy Engineering and Power Technology,Renewable Energy, Sustainability and the Environment,Electrical and Electronic Engineering,Control and Optimization,Engineering (miscellaneous)

Reference53 articles.

1. Wind Energy Engineering;Jain,2011

2. Wind Energy Explained: Theory, Design and Application;Manwell,2010

3. Wind Energy Engineering: A Handbook for Onshore and Offshore Wind Turbines;Letcher,2017

4. Climate change impacts on wind power generation

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