Method of Quartile for determination of Weibull parameters and assessment of wind potential

Z. Uddin, N. Sadiq
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Abstract

Weibull Distribution is the most widely used distribution in wind power assessment. Two parameters Weibull distribution is commonly used for wind distribution modeling. The wind turbine converts wind energy into electrical energy. According to Betz law, No wind turbine can convert more than 59% of the available wind energy into electrical energy. The available method to find the parameters, e.g., Empirical Method (EM), Method of Moment (MoM), Energy Pattern Factor Method (EPFM), Maximum Likelihood Method (MLM), Modified Maximum Likelihood Method (MMLM), measure an overestimated value of wind power. An attempt has been made to develop a new method to evaluate Weibull parameters to measure wind potential close to the actual one. The new methods depend on the Quartiles of the wind distribution, Method of Quartile. Wind speed data for twelve months, January to December of 2016, for the cities Hyderabad, Karachi, and Quetta is used in this study. The new method results are compared with the five methods of Weibull parameter determination, EM, MoM, EPFM, MLM, and MMLM. The new method’s average wind speed is closer to the actual average wind speed than those measured by other methods. The Root Mean Square Error (RMSE), Mean Absolute Error (MABE), and chi-square statistic calculated by all methods are close. The Akaike Information Criterion (AIC) model selection criterion was used for each method and month. It is found that the AIC values for every month and every city are the lowest for MoQ. It also suggests that the new method, MoQ, is the best among the existing method. Keywords: Weibull Distribution, Method of Quartile, Method of Moments, Maximum Likelihood, Empirical Method, Energy Pattern Factor Method
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确定威布尔参数和评估风势的四分位数法
威布尔分布是风电评估中应用最广泛的分布。双参数威布尔分布通常用于风场建模。风力涡轮机将风能转化为电能。根据贝茨定律,没有一个风力涡轮机可以将超过59%的可用风能转化为电能。现有的参数确定方法,如经验法(EM)、矩量法(MoM)、能量模式因子法(EPFM)、最大似然法(MLM)、修正最大似然法(MMLM)等,都测量了风电的高估值。本文尝试开发一种新的方法来评估威布尔参数,以测量接近实际的风势。新的方法依赖于风分布的四分位数,即四分位数法。本研究使用了海得拉巴、卡拉奇和奎达等城市2016年1月至12月12个月的风速数据。将新方法的结果与5种威布尔参数确定方法EM、MoM、EPFM、MLM和MMLM进行了比较。新方法测得的平均风速比其他方法测得的平均风速更接近实际平均风速。各方法计算的均方根误差(RMSE)、平均绝对误差(MABE)和卡方统计量接近。每种方法和月份采用赤池信息准则(Akaike Information Criterion, AIC)模型选择准则。每个月和每个城市的AIC值都是最小起订量的最低值。结果表明,在现有方法中,最小起订量是最优的。关键词:威布尔分布,四分位数法,矩量法,极大似然,经验法,能量模式因子法
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Kuwait Journal of Science & Engineering
Kuwait Journal of Science & Engineering MULTIDISCIPLINARY SCIENCES-
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