考虑气象相似性的短期风力发电组合预报

Yating Liu, Ming Yang, Yixiao Yu, T. Ding, Zhiyuan Si, Menglin Li
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摘要

高精度的短期风力发电预测结果有利于制定科学的发电计划,提高电网的风电吸收能力。本文在分析数值天气预报与风力之间关系的基础上,提出了考虑气象相似度的短期风力联合预报模型,以提高短期风力的预报精度。该方法采用气象相似日模型、极值梯度增强算法和反向传播神经网络算法实现短期风电预测。然后,应用粒子群优化算法确定单个预测模型的权重;最后,结合单个模型的预测结果,得到预测结果。利用新疆省某风电场实际风力数据,实现了短期风力预报任务。仿真结果表明,本文提出的组合模型能有效提高基准模型的预测性能。
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Short-Term Wind Generation Combined Forecast Considering Meteorological Similarity
High-precision short-term wind generation prediction results are conducive to making a scientific generation plan and improving the wind power absorption capacity of the power grids. Based on the analysis of the relationship between the numerical weather prediction and wind power, this paper proposes a short-term wind generation combined forecast model considering meteorological similarity to improve the prediction accuracy of short-term wind power. In this method, the meteorological similarity day model, the extreme gradient boosting algorithm and the back propagation neural network algorithm are selected for achieving the short-term wind power prediction. Then, the particle swarm optimization algorithm is applied to determine the weight of each single forecasting model. Finally, the prediction results are obtained through the combination of the single model prediction results. With the realistic wind power data collected from a wind farm in Xinjiang province, the short-term wind forecasting task is achieved by the proposed method. The simulation results illustrate that the combined model proposed in this paper can effectively improve the forecasting performance of the benchmark models.
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