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Influence of the variation of meteorological and operational parameters on estimation of the power output of a wind farm with active power control

机译:气象和操作参数变异对有源电力控制的风电场功率输出的影响

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This paper analyses the influence of the variation of meteorological and operational parameters on estimation of the power output of a dispatchable wind farm (WF). The active power set-points (APSPs), established to regulate the wind farm power output (WFPO), are one of the analysed parameters. The WF considered as case study is integrated in the Gorona del Viento wind-hydro power plant (El HierroCanary Islands-Spain), which supplies the primary energy demand of the island.Statistical inference between the errors generated by different WFPO estimation models, each fed with different input features, is performed. These models are based on supervised machine learning (ML) regression algorithms, namely support vector regression, random forest, and a combination of the strengths of these two base learning algorithms constructed using stacked regression ensemble techniques. From the results obtained, the following conclusions are drawn: a) There is a marked difference between the errors obtained with the model that only considers wind speed and direction and that which additionally incorporates the APSP parameter, showing the importance of considering this particular parameter; b) the model which incorporates air density and turbulence intensity in addition to the APSP improves the values of all the metrics, independently of the ML technique employed. (c) 2020 Elsevier Ltd. All rights reserved.
机译:本文分析了气象和操作参数变化对调度风电场(WF)电力输出估计的影响。建立用于调节风电场功率输出(WFPO)的有源电力设定点(APSP)是分析的参数之一。被认为是案例研究的WF融合在Gorona del Viento风力 - 水力发电厂(El Hierrocanary Islands-Spain)中,它提供了岛的主要能量需求。不同WFPO估计模型产生的错误之间的统计推断,每种美联储具有不同的输入特征,执行。这些模型基于监督机器学习(ML)回归算法,即支持向量回归,随机森林以及使用堆叠回归集合技术构造的这两个基础学习算法的强度的组合。从所获得的结果,绘制了以下结论:a)使用仅考虑风速和方向的模型而获得的错误之间存在明显的差异,并且该模型另外包含APSP参数,显示考虑该特定参数的重要性; b)除了APSP之外,包含空气密度和湍流强度的模型可以改善所有度量的所有度量的值,而是独立于所采用的ML技术。 (c)2020 elestvier有限公司保留所有权利。

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