Wind Energy Potential Approximation with Various Metaheuristic Optimization Techniques Deployment

Mohammed Wadi, Wisam Elmasry, A. Shobole, Mehmet Rida Tur, R. Bayindir, Hossein Shahinzadeh
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引用次数: 4

Abstract

This paper presents a comprehensive empirical study of five different distribution functions to analysis the wind energy potential, namely, Rayleigh, Gamma, Extreme Value, Logistic, and T Location-Scale. In addition, three metaheuristics optimization methods, Grey Wolf Optimization, Marine Predators Algorithm, and Multi-Verse Optimizer are utilized to determine the optimal parameter values of each distribution. To test the accuracy of the introduced distributions and optimization methods, five error measures are investigated and compared such as mean absolute error, root mean square error, regression coefficient, correlation coefficient, and net fitness. To conduct this analysis, the Catalca site in the Marmara region in Istanbul, Republic of Turkey is selected to be the case study. The experimental results confirm that all introduced distributions based on optimization methods are efficient to model wind speed distribution in the selected site. Rayleigh distribution achieved the best matching while Extreme Value distribution provided the worst matching. Finally, many valuable observations drawn from this study are also discussed. MATLAB 2020b and Excel 365 were used to perform this study.
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基于各种元启发式优化技术的风能势逼近
本文采用Rayleigh分布函数、Gamma分布函数、极值分布函数、Logistic分布函数和T区位尺度分布函数对风电潜力进行了综合实证研究。此外,利用灰狼优化、海洋掠食者算法和多元宇宙优化三种元启发式优化方法确定各分布的最优参数值。为了检验所引入的分布和优化方法的准确性,对平均绝对误差、均方根误差、回归系数、相关系数和净适应度等五种误差度量进行了研究和比较。为了进行这一分析,土耳其共和国伊斯坦布尔马尔马拉地区的Catalca遗址被选为案例研究。实验结果表明,所有基于优化方法引入的分布都能有效地模拟所选场地的风速分布。瑞利分布的匹配效果最好,极值分布的匹配效果最差。最后,本文还讨论了许多有价值的观察结果。使用MATLAB 2020b和Excel 365进行研究。
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