Short-term wind power interval prediction based on fitting error sequences with asymmetric Gaussian distribution

被引:0
作者
Li, Ying [1 ]
Wang, Jianzhou [1 ,2 ]
Zheng, Jingwei [1 ]
Jiang, He [3 ]
机构
[1] Dongbei Univ Finance & Econ, Sch Stat, Dalian, Peoples R China
[2] Macau Univ Sci & Technol, Inst Syst Engn, Macau, Peoples R China
[3] Xi An Jiao Tong Univ, Sch Econ & Finance, Sch Econ & Finance, Xian, Peoples R China
基金
中国国家自然科学基金;
关键词
Wind power forecasting; interval prediction; combined model; asymmetric Gaussian distribution; data preprocessing technique; MODE DECOMPOSITION; NEURAL-NETWORKS; TIME; ARIMA;
D O I
10.1080/15435075.2025.2520464
中图分类号
O414.1 [热力学];
学科分类号
摘要
Accurate short-term wind energy prediction is crucial for wind power systems, and over the years, with the rapid development of artificial intelligence and machine learning techniques, researchers have proposed many models to improve the performance of wind power prediction systems. Traditional interval prediction methods usually assume that the residual series obey a simple Gaussian distribution. However, this is not always the case in reality, which can affect the accuracy of interval prediction. In this study, we develop a new interval prediction model that combines the improvement of point prediction accuracy with more efficient interval prediction results based on it. The study improves the accuracy of point prediction by combining SSA data preprocessing with Cao algorithm to mitigate the noise present in complex time series data. Subsequently, we used an asymmetric Gaussian distribution to fit the residual series to obtain more efficient interval prediction results. To evaluate the model, we conducted a case study using wind power data from October to December 2023 from a wind farm in Belgium. The experimental results show that the integrated model proposed in this paper effectively improves the accuracy of point forecasts as well as interval forecasts compared to a single model.
引用
收藏
页数:24
相关论文
共 43 条
[1]  
Bai S., 2018, arXiv
[2]   Very short-term wind power forecasting with neural networks and adaptive Bayesian learning [J].
Blonbou, Ruddy .
RENEWABLE ENERGY, 2011, 36 (03) :1118-1124
[3]   Testing Shape Restrictions of Discrete Distributions [J].
Canonne, Clement L. ;
Diakonikolas, Ilias ;
Gouleakis, Themis ;
Rubinfeld, Ronitt .
THEORY OF COMPUTING SYSTEMS, 2018, 62 (01) :4-62
[4]   Practical method for determining the minimum embedding dimension of a scalar time series [J].
Cao, LY .
PHYSICA D, 1997, 110 (1-2) :43-50
[5]   A novel time-series model based on empirical mode decomposition for forecasting TAIEX [J].
Cheng, Ching-Hsue ;
Wei, Liang-Ying .
ECONOMIC MODELLING, 2014, 36 :136-141
[6]   Short-term wind speed forecasts through hybrid model based on improved variational mode decomposition [J].
Dai, Yiyan ;
Zhang, Mingjin ;
Xin, Xu ;
Chen, Xiaohu ;
Li, Yongle ;
Liu, Maoyi .
INTERNATIONAL JOURNAL OF GREEN ENERGY, 2024, 21 (10) :2281-2298
[7]   A novel hybrid model for short-term wind power forecasting [J].
Du, Pei ;
Wang, Jianzhou ;
Yang, Wendong ;
Niu, Tong .
APPLIED SOFT COMPUTING, 2019, 80 :93-106
[8]   ARMA based approaches for forecasting the tuple of wind speed and direction [J].
Erdem, Ergin ;
Shi, Jing .
APPLIED ENERGY, 2011, 88 (04) :1405-1414
[9]   Recurrent nets that time and count [J].
Gers, FA ;
Schmidhuber, J .
IJCNN 2000: PROCEEDINGS OF THE IEEE-INNS-ENNS INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS, VOL III, 2000, :189-194
[10]  
Gers FA, 1999, IEE CONF PUBL, P850, DOI [10.1049/cp:19991218, 10.1162/089976600300015015]