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Wind power prediction based on multipositon NWP with rough set theory

机译:基于粗糙集理论的多元NWP的风电预测。

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Wind power prediction is critical to power balance and economic operation of power system when connected to the grid. In order to improve prediction accuracy, NWP information of different positions and height are taken into consideration to predict wind power in wind farms. In this paper, similar day as the prediction day was searched as training sample at first. The key factors of multiposition NWP that affect the wind power prediction are identified by rough set theory. Then the rough set neural network prediction model is built by treating the key factors as the inputs to the model. To test the approach, the NWP data and actual wind power data from a wind farm are used for this study. The prediction results are presented and compared to the single position wind power calculation model, the single position NWP neural network model and persistence model. The results show that rough set method is a useful tool in short term multistep wind power prediction.
机译:当连接到电网时,风电功率预测对于功率平衡和电力系统的经济运行至关重要。为了提高预测精度,考虑了不同位置和高度的NWP信息来预测风电场的风能。在本文中,首先搜索与预测日相似的日期作为训练样本。粗糙集理论确定了影响风电功率预测的多位置NWP的关键因素。然后通过将关键因素作为模型的输入来构建粗糙集神经网络预测模型。为了测试该方法,本研究使用了来自风电场的NWP数据和实际风能数据。给出了预测结果,并将其与单位置风电计算模型,单位置NWP神经网络模型和持久性模型进行了比较。结果表明,粗糙集方法是短期多步风电功率预测的有用工具。

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