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Short Term Electrical Load Forecasting Using Mutual Information Based Feature Selection with Generalized Minimum-Redundancy and Maximum-Relevance Criteria

机译:使用基于互信息的特征选择和广义最小冗余和最大相关性准则的短期电力负荷预测

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A feature selection method based on the generalized minimum redundancy and maximum relevance (G-mRMR) is proposed to improve the accuracy of short-term load forecasting (STLF). First, mutual information is calculated to analyze the relations between the original features and the load sequence, as well as the redundancy among the original features. Second, a weighting factor selected by statistical experiments is used to balance the relevance and redundancy of features when using the G-mRMR. Third, each feature is ranked in a descending order according to its relevance and redundancy as computed by G-mRMR. A sequential forward selection method is utilized for choosing the optimal subset. Finally, a STLF predictor is constructed based on random forest with the obtained optimal subset. The effectiveness and improvement of the proposed method was tested with actual load data.
机译:为了提高短期负荷预测(STLF)的准确性,提出了一种基于广义最小冗余和最大相关度(G-mRMR)的特征选择方法。首先,计算互信息以分析原始特征与载荷序列之间的关系以及原始特征之间的冗余性。其次,通过统计实验选择的加权因子用于平衡使用G-mRMR时要素的相关性和冗余性。第三,根据G-mRMR计算的相关性和冗余度,每个特征按降序排列。利用顺序的前向选择方法来选择最佳子集。最后,基于随机森林构造了STLF预测变量,并获得了最优子集。通过实际载荷数据测试了该方法的有效性和改进性。

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