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Short-Term Local Prediction of Wind Power Based on Singular Spectrum Analysis and Self-Organizing Maps

机译:基于奇异频谱分析和自组织地图的风力短期局部预测

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Along with the increasing penetration of wind power into power systems,more accurate forecast of wind power becomes more and more important for real-time scheduling and operation.This paper proposes a novel model for short-term wind power forecast based on singular spectrum analysis(SSA)and self-organizing maps(SOM).In order to deal with the impact of high volatility of the original time series,SSA is utilized to extract the mean trend from the original time series.After that,SOM is applied to select the similar segments from mean trend,which are then employed in local prediction by support vector regression(SVR).Simulation studies are conducted on real wind power time series,and the final results indicate that the proposed model is more accurate and stable than other models.
机译:随着风力发电的普遍普及,对于实时调度和操作,更准确的风力预测变得越来越重要。本文提出了一种基于奇异频谱分析的短期风力预测模型( SSA)和自组织地图(SOM)。为了处理原始时间序列的高波动性的影响,SSA用于从原始时间序列中提取平均趋势。在此之后,SOM被应用于选择来自平均趋势的类似段,然后通过支持载体回归(SVR)的局部预测中使用的段。在真风电力时间序列上进行了仿制研究,最终结果表明所提出的模型比其他模型更准确且稳定。

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