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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Knowledge Mining Based on Environmental Simulation Applied to Wind Farm Power Forecasting
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Knowledge Mining Based on Environmental Simulation Applied to Wind Farm Power Forecasting

机译:基于环境模拟的知识挖掘在风电场功率预测中的应用

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Considering the inherent variability and uncertainty of wind power generation, in this study, a self-organizing map (SOM) combined with rough set theory clustering technique (RST) is proposed to extract the relative knowledge and to choose the most similar history situation and efficient data for wind power forecasting with numerical weather prediction (NWP). Through integrating the SOM and RST methods to cluster the historical data into several classes, the approach could find the similar days and excavate the hidden rules. According to the data reprocessing, the selected samples will improve the forecast accuracy echo state network (ESN) trained by the class of the forecasting day that is adopted to forecast the wind power output accordingly. The developed methods are applied to a case of power forecasting in a wind farm located in northwest of China with wind power data from April 1, 2008, to May 6, 2009. In order to verify its effectiveness, the performance of the proposed method is compared with the traditional backpropagation neural network (BP). The results demonstrated that knowledge mining led to a promising improvement in the performance for wind farm power forecasting.
机译:考虑到风力发电的内在变异性和不确定性,本研究提出了一种结合粗糙集理论聚类技术(RST)的自组织图(SOM)来提取相关知识并选择最相似的历史情况和高效的方法。具有数值天气预报(NWP)的风电预测数据。通过整合SOM和RST方法将历史数据聚类为几个类别,该方法可以找到相似的日子并挖掘隐藏的规则。根据数据的重新处理,所选样本将提高根据预测日类别训练的预测准确性回波状态网络(ESN),该预测日相应地用于预测风电输出。将该方法应用于2008年4月1日至2009年5月6日利用风力发电数据在中国西北风电场进行的电力预测中。与传统的反向传播神经网络(BP)相比。结果表明,知识挖掘导致风电场功率预测性能有希望的提高。

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