Abstract
To install a wind energy conversion system to a region, the wind speed characteristics of that region must be identified. The two-parameter Weibull distribution is highly efficient in modeling wind speed characteristics. In this study, the wind speed data of 32 cities in three different regions of Turkey have been comparatively analysed to estimate Weibull distribution function parameters by the use of three well-known methods (Graphical Method (GM), Maximum Likelihood Method (MLM), Justus Moment Method (JMM)) and three new parameter estimation methods (Energy Pattern Factor Method (EPFM), Wind Energy Intensification Method (WEIM), Power Density Method (PD)) which have been proposed in recent years. Three years of hourly wind speed data of the specified regions have been used. The performance metrics of these analyses have been compared using Wind Energy Error (WEE), Root Mean Square Error (RMSE), and Coefficient of Determination (R2). The results have shown that while the PD method has high model performance, the JMM is closely competitive with the MLM. Besides, the wind energy densities that were estimated by using actual data have been compared with the resulting Weibull distribution. It has been clear that the method that has the closest estimation to the actual values is the PD method.
Highlights
The use of wind as a renewable and green energy is increasing every day
The Graphical Method (GM), Maximum Likelihood Method (MLM), Energy Pattern Factor Method (EPFM), Wind Energy Intensification Method (WEIM), Justus Moment Method (JMM), and Power Density Method (PD) methods have been used in this study
Graphical Method (GM) This method is created by using the cumulative distribution function
Summary
The use of wind as a renewable and green energy is increasing every day. The demand for energy of the rapidly growing population is greater than ever. It is clear that not one energy source is going to be enough. The nonrenewable resources like fossil fuels are being depleted. For these reasons, coal, oil, and gas reserves are assumed to run out in 95, 23, and 25 years, respectively [1]. The climate change and the increased awareness of the people towards energy consumption make the work on renewable sources more urgent
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