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Obtaining superior wind power predictions from a periodic and heteroscedastic Wind Power Prediction Tool

机译:从周期性和异方差风力预测工具中获得优越的风力预测

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摘要

The Wind Power Prediction Tool (WPPT) has successfully been used for accurate wind power forecasts in the short to medium term scenario (up to 12 hours ahead). Since its development about a decade ago, a lot of additional stochastic modeling has been applied to the interdependency of wind power and wind speed. We improve the model in three ways: First, we replace the rather simple Fourier series of the basic model by more general and flexible periodic Basis splines (Bsplines). Second, we model conditional heteroscedasticity by a threshold-GARCH (TGARCH) model, one aspect that is entirely left out by the underlying model. Third, we evaluate several distributional forms of the model's error term. While the original WPPT assumes gaussian errors only, we also investigate whether the errors may follow a Student's t-distribution as well as a skew t-distribution. In this article we show that our periodic WPPT-CH model is able to improve forecasts' accuracy significantly, when compared to the plain WPPT model.
机译:风能预测工具(WPPT)已成功用于中短期情况下(提前12小时)进行准确的风能预测。自大约十年前发展以来,许多其他随机建模已应用于风能和风速的相互依赖性。我们通过三种方式改进模型:首先,用更通用,更灵活的周期性基础样条(Bsplines)代替基本模型中相当简单的傅里叶级数。其次,我们通过阈值GARCH(TGARCH)模型对条件异方差性进行建模,而基础模型完全忽略了这一方面。第三,我们评估模型误差项的几种分布形式。虽然原始WPPT仅假设高斯误差,但我们还研究了误差是否可能遵循学生的t分布和偏斜t分布。在本文中,我们表明,与普通WPPT模型相比,我们的定期WPPT-CH模型能够显着提高预报的准确性。

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