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Heterogeneous mixture distributions for modeling wind speed, application to the UAE

机译:用于模拟风速的非均质混合物分布,应用于阿联酋

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Heterogeneous mixture distributions (HTM) have not been employed for wind speed modeling of the Arabian Peninsula. In order to improve our understanding of wind energy potential in the Arabian Peninsula, HTM should be tested for the frequency analysis of wind speed. The aim of the current study is to assess the suitability of HTMs and identify the most appropriate probability distribution to model wind speed data in the UAE. Hourly mean wind speed data were used in the current study. Ten homogeneous and heterogeneous mixture distributions were used and constructed by mixing the four following probability distributions: Gamma, Weibull, Extreme value type-one, and Normal distributions. The Weibull and Kappa distributions were also employed as representatives of the conventional non mixture distributions. Maximum Likelihood, Expectation Maximization algorithm, and Least Squares methods were employed to fit the mixture distributions. Results indicate that mixture distributions give the best fit to wind speed data for all stations. Wind speed data of five stations show strong mixture distributional characteristics. Applications of HTMs show a significant improvement in explaining the whole wind speed regime. The Weibull-Extreme value type-one mixture distribution is considered the most appropriate distribution for wind speed data in the UAE. (C) 2016 Elsevier Ltd. All rights reserved.
机译:阿拉伯半岛的风速建模尚未使用非均质混合物分布(HTM)。为了增进我们对阿拉伯半岛风能潜力的了解,应该对HTM进行风速频率分析测试。当前研究的目的是评估HTM的适用性,并确定最合适的概率分布以对阿联酋的风速数据进行建模。在当前研究中使用了每小时平均风速数据。通过混合以下四个概率分布来使用和构造十种均质和非均质混合物分布:Gamma,Weibull,极值类型一和正态分布。 Weibull和Kappa分布也被用作常规非混合物分布的代表。采用最大似然,期望最大化算法和最小二乘法来拟合混合物分布。结果表明,混合气分布最适合所有站的风速数据。五个站点的风速数据显示出很强的混合分布特性。 HTM的应用在解释整个风速状况方面显示出显着的进步。在阿联酋,Weibull-Extreme值一类混合分布被认为是最适合风速数据的分布。 (C)2016 Elsevier Ltd.保留所有权利。

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