Short-term Wind Power Forecasting Using the Hybrid Model of Improved Variational Mode Decomposition and Maximum Mixture Correntropy Long Short-term Memory Neural Network

被引:28
作者
Lu, Wenchao [1 ]
Duan, Jiandong [1 ]
Wang, Peng [2 ]
Ma, Wentao [1 ]
Fang, Shuai [1 ]
机构
[1] Xian Univ Technol, Sch Elect Engn, Xian 710048, Peoples R China
[2] Xianyang Power Supply Co, State Grid Shaanxi Elect Power Co, Xianyang 712009, Peoples R China
基金
中国国家自然科学基金;
关键词
Short-term wind power forecasting; Long Short -Term Memory neural network; Mixture Correntropy; Variational mode decomposition; Particle Swarm Optimization; PREDICTION; FRAMEWORK; VMD;
D O I
10.1016/j.ijepes.2022.108552
中图分类号
TM [电工技术]; TN [电子技术、通信技术];
学科分类号
0808 ; 0809 ;
摘要
With the development of emerging technology, wind power forecasting hybrid with artificial intelligence methods has become a research hotspot. Most of these methods are based on Mean Square Error (MSE) loss. However, when conducting the forecasting studies, the forecasting models built based on the traditional MSE loss have a poor effect, and the wind power data also lack the sensitivity to the nuclear parameters, make it difficult to achieve satisfactory results. Therefore, a wind power forecasting method based on Mixture Correntropy (MC) Long Short-term Memory (LSTM) neural network and Improved Variational Mode Decomposition (IVMD) is proposed in this paper. Aiming at the fact that the mixing coefficient and kernel parameters in Maximum Mixture Correntropy Criterion (MMCC) loss have an impact on its performance, Particle Swarm Optimization (PSO) algorithm is used to optimize the parameters, and PMC(PSO-MC)-LSTM model is constructed. Meanwhile, an IVMD-SE data preprocessing strategy combining Sample Entropy (SE) and IVMD is proposed. The IVMD-SE-PMCLSTM hybrid forecasting model is constructed. Finally, four groups original data from a wind farm are simulated to verify the forecasting performance of the proposed method. The results show that the hybrid forecasting method proposed in this paper can be better applied to the forecasting with higher data complexity.
引用
收藏
页数:15
相关论文
共 40 条
[1]   Digital currency forecasting with chaotic meta-heuristic bio-inspired signal processing techniques [J].
Altan, Aytac ;
Karasu, Seckin ;
Bekiros, Stelios .
CHAOS SOLITONS & FRACTALS, 2019, 126 :325-336
[2]   Hybrid Variational Mode Decomposition and evolutionary robust kernel extreme learning machine for stock price and movement prediction on daily basis [J].
Bisoi, Ranjeeta ;
Dash, P. K. ;
Parida, A. K. .
APPLIED SOFT COMPUTING, 2019, 74 :652-678
[3]   Mixture correntropy for robust learning [J].
Chen, Badong ;
Wang, Xin ;
Lu, Na ;
Wang, Shiyuan ;
Cao, Jiuwen ;
Qin, Jing .
PATTERN RECOGNITION, 2018, 79 :318-327
[4]   Models for Short-Term Wind Power Forecasting Based on Improved Artificial Neural Network Using Particle Swarm Optimization and Genetic Algorithms [J].
Dinh Thanh Viet ;
Vo Van Phuong ;
Minh Quan Duong ;
Quoc Tuan Tran .
ENERGIES, 2020, 13 (11)
[5]   Robust semi-supervised support vector machines with Laplace kernel-induced correntropy loss functions [J].
Dong, Hongwei ;
Yang, Liming ;
Wang, Xue .
APPLIED INTELLIGENCE, 2021, 51 (02) :819-833
[6]   A novel hybrid model based on Bernstein polynomial with mixture of Gaussians for wind power forecasting [J].
Dong, Yingchao ;
Zhang, Hongli ;
Wang, Cong ;
Zhou, Xiaojun .
APPLIED ENERGY, 2021, 286
[7]   Variational Mode Decomposition [J].
Dragomiretskiy, Konstantin ;
Zosso, Dominique .
IEEE TRANSACTIONS ON SIGNAL PROCESSING, 2014, 62 (03) :531-544
[8]   Short-term wind power forecasting using the hybrid model of improved variational mode decomposition and Correntropy Long Short-term memory neural network [J].
Duan, Jiandong ;
Wang, Peng ;
Ma, Wentao ;
Tian, Xuan ;
Fang, Shuai ;
Cheng, Yulin ;
Chang, Ying ;
Liu, Haofan .
ENERGY, 2021, 214
[9]  
Eberhart R., 1995, P INT C NEUR NETW IC, P1942
[10]   Performance comparison of ANN<?show [AQ ID=Q1]?>s model with VMD for short-term wind speed forecasting [J].
Gendeel, Mohammed ;
Zhang Yuxian ;
Han Aoqi .
IET RENEWABLE POWER GENERATION, 2018, 12 (12) :1424-1430