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Short-Term Forecasting of Wind Speed and Power - A Clustering Approach

机译:风速和功率的短期预测-一种聚类方法

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In this study, we develop a mixed ARMA model that incorporates the wind direction into short term wind speed and wind power output forecasts. For this purpose, existing association between the wind speed and wind direction are examined using a clustering approach. Using k-means algorithm, wind directions are classified based on the accompanying wind speeds. Using an ARMA model for forecasting the wind direction, those values are associated with the formed clusters by using dummy variables. These dummy variables are employed in the mixed ARMA model. The analysis indicates that incorporating wind direction provides slightly but consistently better estimates for the wind speed for short term forecasts. Improvements in forecasting accuracy for the wind power output are also realized by employing mixed-ARMA models.
机译:在这项研究中,我们开发了一个混合ARMA模型,该模型将风向纳入了短期风速和风能输出预测中。为此,使用聚类方法检查了风速和风向之间的现有关联。使用k-means算法,可根据伴随的风速对风向进行分类。使用ARMA模型预测风向,这些值通过使用虚拟变量与形成的群集关联。这些伪变量在混合ARMA模型中使用。分析表明,结合风向可以短期预测风速,但可以持续提供更好的估计。通过使用混合ARMA模型,还可以提高风电输出的预测精度。

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