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A variable-weight combination forecasting model based on GM(1,1) model and RBF neural network

机译:基于GM(1,1)模型和RBF神经网络的变权组合预测模型

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A variable-weight combination forecasting model using the least square method is built for solving, which is based on grey GM(1,1) model and RBF neural network. With actual consumption data, these three models can be used to predict the monthly social total electricity demand of a year for the particular area respectively. Through comparing the actual load value with the prediction results obtained by different models, predicted value, the actual value graphical trend and relative error of the prediction results obtained in the three models are analyzed. The feasibility of three load forecasting models, which are applicable to' small samples' object is discussed. In MATLAB simulation, using actual load data to predict, it's borne out that the outcome of the variable weight combination forecasting is better than the gray prediction method and RBF neural network prediction method and it is suitable for the selected region of the actual situation in the text.
机译:建立了基于最小二乘法的变权组合预测模型,该模型基于灰色GM(1,1)模型和RBF神经网络。利用实际的消耗数据,这三个模型可以分别用于预测特定区域一年的每月社会总用电量。通过将实际载荷值与不同模型获得的预测结果进行比较,分析了在三个模型中获得的预测值,实际值图形趋势和相对误差。讨论了适用于“小样本”对象的三种负荷预测模型的可行性。在MATLAB仿真中,利用实际载荷数据进行预测,结果表明,变权重组合预测的结果优于灰色预测方法和RBF神经网络预测方法,适用于现场实际情况的选定区域。文本。

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