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A Permutation Importance-Based Feature Selection Method for Short-Term Electricity Load Forecasting Using Random Forest

机译:基于置换重要性的随机森林短期电力负荷预测特征选择方法

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The prediction accuracy of short-term load forecast (STLF) depends on prediction model choice and feature selection result. In this paper, a novel random forest (RF)-based feature selection method for STLF is proposed. First, 243 related features were extracted from historical load data and the time information of prediction points to form the original feature set. Subsequently, the original feature set was used to train an RF as the original model. After the training process, the prediction error of the original model on the test set was recorded and the permutation importance (PI) value of each feature was obtained. Then, an improved sequential backward search method was used to select the optimal forecasting feature subset based on the PI value of each feature. Finally, the optimal forecasting feature subset was used to train a new RF model as the final prediction model. Experiments showed that the prediction accuracy of RF trained by the optimal forecasting feature subset was higher than that of the original model and comparative models based on support vector regression and artificial neural network.
机译:短期负荷预测(STLF)的预测准确性取决于预测模型的选择和特征选择的结果。本文提出了一种新的基于随机森林(STF)的基于随机森林(RF)的特征选择方法。首先,从历史负荷数据和预测点的时间信息中提取243个相关特征,以形成原始特征集。随后,使用原始功能集将RF训练为原始模型。在训练过程之后,记录原始模型在测试集上的预测误差,并获得每个特征的排列重要性(PI)值。然后,使用改进的顺序向后搜索方法基于每个特征的PI值选择最佳的预测特征子集。最后,最佳预测特征子集用于训练新的RF模型作为最终预测模型。实验表明,基于支持向量回归和人工神经网络的最优预测特征子集训练的RF的预测精度高于原始模型和比较模型。

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