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A Research on Power Load Forecasting Model Based on Data Mining

机译:基于数据挖掘的电力负荷预测模型研究

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Utilizing the advantage of data mining technology in processing large data and eliminating redundant information, the system mines the historical daily loading which has the same meteorological category as the forecasting day in order to compose data sequence with highly similar meteorological features. With this method it can decrease SVM training data and overcome the disadvantage of very large data and slow processing speed when constructing SVM model. Comparing with single SVM and BP neural network in short-term load forecasting, this new method can achieve greater forecasting accuracy. It is denoted that the SVM learning system has advantage when the information preprocessing is based on data mining technology.
机译:利用数据挖掘技术在处理大数据和消除冗余信息时的优势,系统挖掘与预测日相同的气象类别,以便构成具有高度相似气象特征的数据序列的历史日本负载。通过这种方法,它可以减少SVM训练数据,并在构建SVM模型时克服非常大的数据的缺点和慢速处理速度。与短期负荷预测中单个SVM和BP神经网络相比,这种新方法可以实现更大的预测精度。它表示,当信息预处理基于数据挖掘技术时,SVM学习系统具有优势。

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