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Optimal Identification of Self-Reunion Multiple Regression (SRMR) Model Based on Regression Function for Short-Term Load Forecasting

机译:基于回归函数对短期负荷预测的自我reunion多元回归(SRMR)模型的最佳识别

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This thesis applies a self-reunion multiple regression (SRMR) model in short-term load forecasting (STLF) and obtains very accurate and steadfast results. This thesis first uses cluster analysis to categorize historical data. Data with similar features will be put in one category. After that, select one group of multiple regression variables in different categories, which serves as the basis for the load forecasting. Then, determine each selected multiple regression variables' regression function for the predicted load by taking the regression function as the base for the forecasting model and using the least-square error. Finally, with the linear programming, find the reunion coefficient corresponding to each regression function. The SRMR model obtained through the fore-going steps is tested by the actual Taiwan load data. Results prove that the average forecast absolute error sought by the model is about 1%, better than the error by the traditional methods.
机译:本文在短期负载预测(STLF)中,应用自我重聚的多元回归(SRMR)模型,并获得非常准确和坚定的结果。本文首先使用群集分析来对历史数据进行分类。具有类似功能的数据将放在一个类别中。之后,在不同类别中选择一组多元回归变量,其用作负载预测的基础。然后,通过将回归函数作为预测模型的基础和使用最小二乘误差来确定预测负载的每个选定的多元回归变量的回归函数。最后,通过线性编程,找到与每个回归函数对应的重聚系数。通过前进步骤获得的SRMR模型由实际的台湾负载数据进行测试。结果证明,模型所寻求的平均预测绝对误差约为1%,比传统方法更好。

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