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Development of short-term forecast quality for new offshore wind farms

机译:新近海上风电场的短期预测质量的发展

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As the rapid wind power build-out continues, a large number of new wind farms will come online but forecasters and forecasting algorithms have little experience with them. This is a problem for statistical short term forecasts, which must be trained on a long record of historical power production-exactly what is missing for a new farm. Focus of the study was to analyse development of the offshore wind power forecast (WPF) quality from beginning of operation up to one year of operational experience. This paper represents a case study using data of the first German offshore wind farm "alpha ventus" and first German commercial offshore wind farm "Balticl". The work was carried out with measured data from meteorological measurement mast FIN01, measured power from wind farms and numerical weather prediction (NWP) from the German Weather Service (DWD). This study facilitates to decide the length of needed time series and selection of forecast method to get a reliable WPF on a weekly time axis. Weekly development of WPF quality for day-ahead WPF via different models is presented. The models are physical model; physical model extended with a statistical correction (MOS) and artificial neural network (ANN) as a pure statistical model. Self-organizing map (SOM) is investigated for a better understanding of uncertainties of forecast error.
机译:随着快速风力的延续的继续,大量的新风电场将上网,但预报员和预测算法几乎没有经验。这是统计短期预测的问题,必须在长期记录历史电力生产中培训 - 确切地说是一个新农场的缺失。该研究的重点是分析从业务开始到一年的运营经验的近海风电预测(WPF)质量的发展。本文代表了使用第一款德国海上风电场“Alpha Ventus”的数据和第一个德国商用海上风电场“Balticl”的案例研究。该工作是通过来自气象测量桅杆FIN01的测量数据进行的,从德国天气服务(DWD)的风电场和数值天气预报(NWP)测量功率。本研究有助于决定所需时间序列的长度和选择预测方法,以在每周时间轴上获得可靠的WPF。提出了通过不同型号的WPF质量的每周开发WPF质量。模型是物理模型;用统计校正(MOS)和人工神经网络(ANN)延伸的物理模型作为纯统计模型。为了更好地了解预测错误的不确定性,研究了自组织地图(SOM)。

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