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A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution

Year 2023, , 1096 - 1120, 01.09.2023
https://doi.org/10.35378/gujs.1026834

Abstract

Determining wind regime distribution patterns is essential for many reasons; modelling wind power potential is one of the most crucial. In that regard, Weibull, Gamma, and Rayleigh functions are the most widely used distributions for describing wind speed distribution. However, they could not be the best for describing all wind systems. Also, estimation methods play a significant role in deciding which distribution can achieve the best matching. Consequently, alternative distributions and estimation methods are required to be studied. An extensive analysis of five different distributions to describe the wind speeds distribution, namely Rayleigh, Weibull, Inverse Gaussian, Burr Type XII, and Generalized Pareto, are introduced in this study. Further, five metaheuristic optimization methods, Grasshopper Optimization Algorithm, Grey Wolf Optimization, Moth-Flame Optimization, Salp Swarm Algorithm, and Whale Optimization Algorithm, are employed to specify the optimum parameters per distribution. Five error criteria and seven statistical descriptors are utilized to compare the good-of-fitness of the introduced distributions. Therefore, this paper provides different important methods to estimate the wind potential at any site.

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Year 2023, , 1096 - 1120, 01.09.2023
https://doi.org/10.35378/gujs.1026834

Abstract

References

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  • [27] Sohoni, V., Gupta, S., and Nema, R., “A comparative analysis of wind speed probability distributions for wind power assessment of four sites”, Turkish Journal of Electrical Engineering & Computer Sciences, 24(6): 4724–4735, (2016).
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  • [31] Saxena, B.K., Rao, K.V.S., “Comparison of Weibull parameters computation methods and analytical estimation of wind turbine capacity factor using polynomial power curve model: case study of a wind farm”, Renewables:Wind, Water, and Solar, 2(1): 1–11, (2015).
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  • [33] Drobinski, P., Coulais, C., and Jourdier, B., “Surface wind-speed statistics modelling: Alternatives to the Weibull distribution and performance evaluation”, Boundary-Layer Meteorology, 157(1): 97–123, (2015).
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  • [37] Wadi, M., Baysal, M., and Shobole, A., “Reliability and Sensitivity Analysis for Closed-Ring Distribution Power Systems”, Electric Power Components and Systems, 49(6-7): 696-714, (2022).
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There are 85 citations in total.

Details

Primary Language English
Subjects Engineering
Journal Section Electrical & Electronics Engineering
Authors

Mohammed Wadi 0000-0001-8928-3729

Wisam Elmasry This is me 0000-0002-0234-4099

Publication Date September 1, 2023
Published in Issue Year 2023

Cite

APA Wadi, M., & Elmasry, W. (2023). A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution. Gazi University Journal of Science, 36(3), 1096-1120. https://doi.org/10.35378/gujs.1026834
AMA Wadi M, Elmasry W. A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution. Gazi University Journal of Science. September 2023;36(3):1096-1120. doi:10.35378/gujs.1026834
Chicago Wadi, Mohammed, and Wisam Elmasry. “A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution”. Gazi University Journal of Science 36, no. 3 (September 2023): 1096-1120. https://doi.org/10.35378/gujs.1026834.
EndNote Wadi M, Elmasry W (September 1, 2023) A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution. Gazi University Journal of Science 36 3 1096–1120.
IEEE M. Wadi and W. Elmasry, “A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution”, Gazi University Journal of Science, vol. 36, no. 3, pp. 1096–1120, 2023, doi: 10.35378/gujs.1026834.
ISNAD Wadi, Mohammed - Elmasry, Wisam. “A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution”. Gazi University Journal of Science 36/3 (September 2023), 1096-1120. https://doi.org/10.35378/gujs.1026834.
JAMA Wadi M, Elmasry W. A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution. Gazi University Journal of Science. 2023;36:1096–1120.
MLA Wadi, Mohammed and Wisam Elmasry. “A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution”. Gazi University Journal of Science, vol. 36, no. 3, 2023, pp. 1096-20, doi:10.35378/gujs.1026834.
Vancouver Wadi M, Elmasry W. A Comparative Assessment of Five Different Distributions Based on Five Different Optimization Methods for Modeling Wind Speed Distribution. Gazi University Journal of Science. 2023;36(3):1096-120.