一种风电场功率组合预测方法

Chen Ye, Gengyin Li, Ming Zhou
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引用次数: 7

摘要

风电功率预测对风电场接入电力系统具有重要意义。本文分析了时间序列预测、基于混沌理论的Elman网络预测、灰色神经网络预测、广义回归神经网络预测等单项预测模型,提出了熵权组合预测模型和基于向量角余弦的风电预测最优组合预测模型。预测结果表明,由于不同方法的预测精度不同,精度高的方法可能在某些点上带来较大的变化,而组合预测可以减少几个点的预测变化,从而提高预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A combined prediction method of wind farm power
Wind power forecasting has great significance to the connection of wind farms to the electric power system. This paper analyzes individual forecast models, such as the time series forecasting, Elman network forecasting that based on the chaos theory, grey neural network forecasting, and generalized regression neural network forecasting, etc., then puts forward an entropy weight combination prediction model, and an optimal combination forecasting model for the wind power forecasting that based on vector angle cosine. The forecasting results indicate that due to the different forecast precisions of different methods, the methods with high precisions may bring great variation in some points, and the combination forecast can reduce the forecasting variation in several points, which improve the forecasting precision.
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