New Hybrid Deep Neural Architectural Search-Based Ensemble Reinforcement Learning Strategy for Wind Power Forecasting

被引:40
作者
Jalali, Seyed Mohammad Jafar [1 ]
Osorio, Gerardo J. [2 ,3 ]
Ahmadian, Sajad [4 ]
Lotfi, Mohamed [5 ,6 ]
Campos, Vasco M. A. [7 ]
Shafie-khah, Miadreza [8 ]
Khosravi, Abbas [1 ]
Catalao, Joao P. S. [5 ,6 ]
机构
[1] Deakin Univ, Inst Intelligent Syst Res & Innovat IISRI, Waurn Ponds, Vic 3216, Australia
[2] Portucalense Univ Infante D Henrique, REMIT, P-4200075 Porto, Portugal
[3] Univ Beira Interior, C MAST, P-6200358 Covilha, Portugal
[4] Kermanshah Univ Technol, Fac Informat Technol, Kermanshah 6715685420, Iran
[5] Univ Porto, Fac Engn, P-4200465 Porto, Portugal
[6] INESC TEC, P-4200465 Porto, Portugal
[7] Redes Energet Nacionais REN SGPS SA, P-1700177 Lisbon, Portugal
[8] Univ Vaasa, Sch Technol & Innovat, Vaasa 65200, Finland
关键词
Predictive models; Forecasting; Wind power generation; Deep learning; Data models; Wind forecasting; Hybrid power systems; Advanced evolutionary algorithm; deep neural architectural search; ensemble reinforcement learning (RL) strategy; hybrid model; wind power forecasting; MUTUAL INFORMATION; NETWORK; MODEL; PREDICTION;
D O I
10.1109/TIA.2021.3126272
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Wind power instability and inconsistency involve the reliability of renewable power energy, the safety of the transmission system, the electrical grid stability and the rapid developments of energy market. The study on wind power forecasting is quite important at this stage in order to facilitate maximum wind energy growth as well as better efficiency of electrical power systems. In this work, we propose a novel hybrid data driven model based on the concepts of deep learning-based convolutional-long short term memory (CLSTM), mutual information, evolutionary algorithm, neural architectural search procedure, and ensemble-based deep reinforcement learning (RL) strategies. We name this hybrid model as DOCREL. In the first step, the mutual information extracts the most effective characteristics from raw wind power time series datasets. Second, we develop an improved version of the evolutionary whale optimization algorithm in order to effectively optimize the architecture of the deep CLSTM models by performing the neural architectural search procedure. At the end, our proposed deep RL-based ensemble algorithm integrates the optimized deep learning models to achieve the lowest possible wind power forecasting errors for two wind power datasets. In comparison with fourteen state-of-the-art deep learning models, our proposed DOCREL algorithm represents an excellent performance seasonally for two different case studies.
引用
收藏
页码:15 / 27
页数:13
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