4.6 Article

Electric Load Forecasting by Hybrid Self-Recurrent Support Vector Regression Model With Variational Mode Decomposition and Improved Cuckoo Search Algorithm

期刊

IEEE ACCESS
卷 8, 期 -, 页码 14642-14658

出版社

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/ACCESS.2020.2966712

关键词

Support vector regression; variational mode decomposition; self-recurrent mechanism; tent chaotic mapping function; out-bound-back mechanism; cuckoo search algorithm

资金

  1. Jiangsu Normal University, China [9213618401]

向作者/读者索取更多资源

Accurate electric load forecasting is critical not only in preventing wasting electricity production but also in facilitating the reasonable integration of clean energy resources. Hybridizing the variational mode decomposition (VMD) method, the chaotic mapping mechanism, and improved meta-heuristic algorithm with the support vector regression (SVR) model is crucial to preventing the premature problem and providing satisfactory forecasting accuracy. To solve the boundary handling problem of the cuckoo search (CS) algorithm in the cuckoo birds searching processes, this investigation proposes a simple method, called the out-bound-back mechanism, to help those out-bounded cuckoo birds return to their previous (the most recent iteration) optimal location. The proposed self-recurrent (SR) mechanism, inspired from the combination of Jordans and Elmans recurrent neural networks, is used to collect comprehensive and useful information from the training and testing data. Therefore, the self-recurrent mechanism is hybridized with the SVR-based model. Ultimately, this investigation presents the VMD-SR-SVRCBCS model, by hybridizing the VMD method, the SVR model with the self-recurrent mechanism, the Tent chaotic mapping function, the out-bound-back mechanism, and the cuckoo search algorithm. Two real-world datasets are used to demonstrate that the proposed model has greater forecasting accuracy than other models.

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