基于远程互联NWP信息的短期风电预测

Jiaming Li, Ying Qiao, Zhifeng Liang, Zongxiang Lu
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引用次数: 2

摘要

准确的短期风电功率预测对可再生能源并网比例高的电力系统至关重要。数值天气预报的遥相关信息可以为短期预报提供更丰富的气象信息,从而提高预报的准确性。本文建立了一种考虑遥连NWPs的新型短期WPF系统。首先,定量分析了遥连NWPs与风电的关系。在此基础上,设计了一种数据清洗(DC)策略和结合远连nwp的WPF模型结构。并以山东某风电场的实际运行数据为例进行了应用。结果表明,应用本文构建的框架后,支持向量回归(SVR)、多层感知器(MLP)和长短期记忆(LSTM)等常用的短期WPF模型的性能得到了有效提高。
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Short-term Wind Power Forecast based on Teleconnected NWP Information
Accurate short-term wind power forecast (WPF) is essential for power system with high proportion of renewable energy (RE) integration. Teleconnected information of numerical weather predictions (NWPs) can give more abundant meteorological information for short-term WPF so as to improve the accuracy. A novel short-term WPF system considering teleconnected NWPs is established in this paper. Firstly, the relationship between teleconnected NWPs and wind power is analyzed quantitatively. Furthermore, a data cleaning (DC) strategy and WPF model structure combining teleconnected NWPs are design. We apply our algorithm based on actual operation data of a Shandong wind farm. Results show that after applying the framework built in this paper, the performance of common used short-term WPF models such as support vector regression (SVR), multi-layer perceptron (MLP) and long short-term memory (LSTM) have been improved effectively.
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