支持向量回归中参数动态优化:在电力负荷预测中的应用

Chin-Chia Hsu, Chih H. Wu, Shi Chen, K. Peng
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引用次数: 34

摘要

本文提出了一种新的支持向量回归参数优化模型GA-SVR,并将该模型应用于最大日负荷预测问题。采用实值遗传算法(RGA)搜索支持向量回归(SVR)的最优参数,提高支持向量回归的精度。在EUNITE网络上公布的复杂电力负荷预测竞赛中对所提出的模型进行了测试。结果表明,新的GA-SVR模型优于以前的模型。具体来说,新的GA-SVR模型能够在电力负荷预测中成功地识别出预测误差最小的svm参数MAPE和最大误差的最优值。
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Dynamically Optimizing Parameters in Support Vector Regression: An Application of Electricity Load Forecasting
This study develops a novel model, GA-SVR, for parameters optimization in support vector regression and implements this new model in a problem forecasting maximum electrical daily load. The real-valued genetic algorithm (RGA) was adapted to search the optimal parameters of support vector regression (SVR) to increase the accuracy of SVR. The proposed model was tested on a complicated electricity load forecasting competition announced on the EUNITE network. The results illustrated that the new GA-SVR model outperformed previous models. Specifically, the new GA-SVR model can successfully identify the optimal values of parameters of SVR with the lowest prediction error values, MAPE and maximum error, in electricity load forecasting.
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