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Incorporating air density into a Gaussian process wind turbine power curve model for improving fitting accuracy

机译:将空气密度纳入高斯过程风机功率曲线模型中以提高拟合精度

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A power curve conventionally represents the relationship between hub height wind speed and wind turbine power output. Power curves facilitate the prediction of power production at a site and are also useful in identifying the significant changes in turbine performance which can be vital for condition monitoring. However, their accuracy is significantly influenced by changes in air density, mainly when the turbine is operating below rated power. A Gaussian process (GP) is a nonparametric machine learning approach useful for power curve fitting. Critical analysis of temperature correction is essential for improving the accuracy of wind turbine power curves. The conventional approach is to correct the data for air density before it is binned to provide a power curve, as described in the IEC standard. In this paper, four different possible approaches of air density correction and its effect on GP power curve fitting model accuracy are explored to identify whether the traditional IEC approach used for air density correction is most effective when estimating power curves using a GP. Finding the most accurate air density compensation approach is necessary to minimize GP model uncertainty.
机译:功率曲线通常表示轮毂高度风速和风力涡轮机功率输出之间的关系。功率曲线有助于预测站点的发电量,还有助于确定涡轮机性能的重大变化,这对于状态监控至关重要。但是,它们的精度受空气密度变化的影响很大,主要是当涡轮机在额定功率以下运行时。高斯过程(GP)是一种用于功率曲线拟合的非参数机器学习方法。温度校正的关键分析对于提高风力发电机功率曲线的准确性至关重要。常规方法是在对数据进行装箱以提供功率曲线之前校正空气密度数据,如IEC标准中所述。本文探讨了四种不同的空气密度校正方法及其对GP功率曲线拟合模型准确性的影响,以确定使用GP估算功率曲线时,用于空气密度校正的传统IEC方法是否最有效。找到最准确的空气密度补偿方法对于最小化GP模型的不确定性是必要的。

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