Short-term wind power forecasting based on two-stage attention mechanism

被引:43
作者
Wang, Xiangwen [1 ]
Li, Pengbo [1 ]
Yang, Junjie [2 ]
机构
[1] Shanghai Univ Elect Power, Coll Elect & Informat Engn, 2103 Pingliang Rd, Shanghai, Peoples R China
[2] Shanghai Dianji Univ, 300 Shuihua Rd, Shanghai, Peoples R China
基金
中国国家自然科学基金;
关键词
wind power plants; learning (artificial intelligence); regression analysis; power engineering computing; load forecasting; wind power; neural nets; probability; actual wind power dataset; wind power interval; long-short-term memory network two-stage attention mechanism; wind power forecasting model; wind farm; term wind power forecasting; NEURAL-NETWORK; MODEL; LOAD;
D O I
10.1049/iet-rpg.2019.0614
中图分类号
X [环境科学、安全科学];
学科分类号
08 ; 0830 ;
摘要
Wind power is usually closely related to the meteorological information around the wind farm, which leads to the fluctuation of wind power and makes it difficult to predict precisely. In this study, a wind power forecasting model based on long-short-term memory network two-stage attention mechanism is established. The attention mechanism is extensively employed to weigh the input feature and strengthen the trend characteristic of wind power. The intermittency and volatility feature of the wind are efficiently mitigated, and the prediction accuracy is improved significantly. Besides, quantile regression and kernel density estimation are combined with the proposed model to predict the wind power interval and the probability density. These two parameters are important information for ensuring security and stability while accessing to the electricity grid. The simulation results on the actual wind power dataset verify the higher prediction accuracy of the proposed model compared with other machine learning methods.
引用
收藏
页码:297 / 304
页数:8
相关论文
共 26 条
[1]  
[Anonymous], 2014, C EMPIRICAL METHODS, DOI 10.3115/v1/d14-1179.
[2]  
Bahdanau D, 2016, Arxiv, DOI arXiv:1409.0473
[3]   LEARNING LONG-TERM DEPENDENCIES WITH GRADIENT DESCENT IS DIFFICULT [J].
BENGIO, Y ;
SIMARD, P ;
FRASCONI, P .
IEEE TRANSACTIONS ON NEURAL NETWORKS, 1994, 5 (02) :157-166
[4]   A sensitivity study of the WRF model in wind simulation for an area of high wind energy [J].
Carvalho, David ;
Rocha, Alfredo ;
Gomez-Gesteira, Moncho ;
Santos, Carlos .
ENVIRONMENTAL MODELLING & SOFTWARE, 2012, 33 :23-34
[5]  
Chen D.-D., 2011, J SHANGHAI U ELECT P, V27, P248
[6]   The Wind Integration National Dataset (WIND) Toolkit [J].
Draxl, Caroline ;
Clifton, Andrew ;
Hodge, Bri-Mathias ;
McCaa, Jim .
APPLIED ENERGY, 2015, 151 :355-366
[7]  
Fan Gao-feng, 2008, Proceedings of the CSEE, V28, P118
[8]  
Graves A, 2012, STUD COMPUT INTELL, V385, P1, DOI [10.1007/978-3-642-24797-2, 10.1162/neco.1997.9.1.1]
[9]   A deep learning model for short-term power load and probability density forecasting [J].
Guo, Zhifeng ;
Zhou, Kaile ;
Zhang, Xiaoling ;
Yang, Shanlin .
ENERGY, 2018, 160 :1186-1200
[10]   Quantile regression [J].
Das, Kiranmoy ;
Krzywinski, Martin ;
Altman, Naomi .
NATURE METHODS, 2019, 16 (06) :451-452