Öz The amount of potential wind energy to be generated in Yozgat province was calculated depending on the hub height (m) and wind speed (m/sec) in this study. The data of 85 wind power plants installed and operating in Turkey were utilized. The data of the amount of produced energy (kWh) in these wind power plants belonged to the year 2018. The Multi-factor Anova method was employed in order to statistically analyze the significance levels of the data set. For the methodology part of the study, tower height and wind speed were determined as input factors and the amount of energy produced selected as the output factor. As a result of the statistical analysis, it was observed that both input factors were effective on the output variable. In line with these results, the potential energy amounts to be produced by the wind power plants to be established in Yozgat province have been calculated. According to the results, it was understood that Yozgat is a suitable region for wind power plants depending on the parameters and variables considered in this study.
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