Author:
Xie Xin,Huang Feng,He Chengjin,Zhou Huaan,Hu Feiyu,Zeng Bin,Huang Lingxiang
Abstract
AbstractWind power prediction holds significant value for the stability of the electrical grid when wind power is connected to the grid. Using neural networks for wind power prediction may have some limitations, such as slow speed and low accuracy. This paper proposes to enhance the power prediction accuracy and speed by optimizing the neural network through health assessment wind turbines. Firstly, based on wind turbine actual operating data, a health assessment is conducted to obtain a health matrix of wind turbine. Then, by calculating the weights of the matrix, the power prediction strategy of the network is optimized. Following that, matrix approximation hyperparameters are utilized to expedite the optimization process. Finally, some tests are conducted on neural network power prediction, act as optimized back propagation (BP) neural network and whale swarm algorithm–support vector regression (WSA-SVR) neural networks are employed for wind power prediction. Results show noticeable optimization: after optimizing the BP network, power prediction accuracy increased by about 40%, and prediction speed rose by about 20%; after optimizing the WSA-SVR network, power prediction accuracy improved by 10%, and prediction speed surged by about 45%. Further analysis shows that this method can improve the accuracy and speed of most neural network wind power prediction algorithms.
Funder
National Natural Science Foundation of China
Hunan Provincial Natural Science Foundation of China
Special Project for Construction of Changzhutan National Independent Innovation Demonstration Zone
Publisher
Springer Science and Business Media LLC
Reference33 articles.
1. Yuepu W (2020) Analysis of the current status and development trend of wind power generation [J]. Power Equip Manage 50(11):21–22
2. Hui Z, Yifei L, Lei X (2022) Discussion on the influencing factors of offshore wind farm site selection [J]. China Water Transp (Second Half of the Month) 22(12):44–46
3. Ge Xiaolin, Yisheng Xu, Yang Fu et al (2022) Joint planning of offshore wind-storage with multiple uncertainties [J]. Power Grid Technol 15:1-14.1779
4. Moreira MO, Balestrassi PP, Paiva AP, Ribeiro PF, Bonatto BD (2021) Design of experiments using artificial neural network ensemble for photovoltaic generation forecasting [J]. Renew Sustain Energy Rev 135:110450
5. Qian Z, Yushi W, Yulin L (2021) Improvement of multi-layer soil moisture prediction using support vector machines and ensemble Kalman filter coupled with remote sensing soil moisture datasets over an agriculture dominant basin in China [J]. Hydrol Proc 35(4):14154