Regional Wind Power Forecasting Based on Hierarchical Clustering and Upscaling Method

Ke Wang, Yao Zhang, Fan Lin, Yang Xu
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引用次数: 1

Abstract

For a long time, the world has been committed to optimizing the energy structure to reduce carbon emissions, so that renewable energies, for example wind power, have been widely integrated into power system. A large number of random and fluctuating wind power makes the system bear more and more risks, which has caused the dispatching department to pay increasing attention to regional wind power output. Although the upscaling method is widely used to predict regional wind power output, it still has shortcomings. This paper proposes a regional wind power prediction based on hierarchical clustering and upscaling method. This approach uses a greedy algorithm to search for the optimal number of sub-regions. Finally, the effectiveness of the proposed forecasting approach has been verified on real-world data.
基于层次聚类和上尺度方法的区域风电预测
长期以来,世界各国一直致力于优化能源结构,减少碳排放,使风能等可再生能源广泛纳入电力系统。大量的随机波动风电使系统承担的风险越来越大,这使得调度部门对区域风电输出越来越重视。虽然上尺度法被广泛应用于区域风电输出预测,但仍存在不足。提出了一种基于层次聚类和上尺度的区域风电功率预测方法。该方法使用贪心算法搜索子区域的最优数量。最后,在实际数据上验证了所提预测方法的有效性。
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