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首页> 外文期刊>Eurasip Journal on Wireless Communications and Networking >Ultra-short-term wind speed forecasting based on support vector machine with combined kernel function and similar data
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Ultra-short-term wind speed forecasting based on support vector machine with combined kernel function and similar data

机译:基于支持向量机的超短期风速预测,内核功能和类似数据

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摘要

The accuracy of wind power prediction is very important for the stable operation of a power system. Ultra-short-term wind speed forecasting is an effective way to ensure real-time and accurate wind power prediction. In this paper, a short-term wind speed forecasting method based on a support vector machine with a combined kernel function and similar data is proposed. Similar training data are selected based on the wind tendency, and a combination of two kinds of kernel functions is applied in forecasting using a support vector machine. The forecasting results for a wind farm in Ningxia Province indicate that a combination of kernel functions with complementary advantages outperforms each single function, and forecasting models based on grouped wind data with a similar tendency could reduce the forecasting error. Furthermore, more accurate wind forecasting results ensure better wind power prediction.
机译:风电预测的准确性对于电力系统的稳定运行非常重要。 超短期风速预测是确保实时和准确的风力预测的有效方法。 本文提出了一种基于具有组合核函数和类似数据的支持向量机的短期风速预测方法。 基于风倾向选择类似的训练数据,并且应用两种内核功能的组合应用于使用支持向量机预测。 宁夏省风电场的预测结果表明,内核功能的组合具有互补优势的优势,以及基于具有类似趋势的分组风数据的预测模型可以减少预测误差。 此外,更精确的风预测结果确保了更好的风力电力预测。

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