Author:
Wang Yonggang,Zhao Kaixing,Hao Yue,Yao Yilin
Reference35 articles.
1. A multi-stage predicting methodology based on data decomposition and error correction for ultra-short-term wind energy prediction[J];Y Zhang;Journal of Cleaner Production,2021
2. Short-term wind power forecasting based on support vector machine with improved dragonfly algorithm[J];L L Li;Journal of Cleaner Production,2020
3. Short-Term Power Prediction of Wind Power Generation System Based on Logistic Chaos Atom Search Optimization BP Neural Network;Y Zhang;International Transactions on Electrical Energy Systems,2023
4. A novel genetic LSTM model for wind power forecast;F Shahid;Energy,2021
5. Short-term wind power prediction based on LSSVM-GSA model;X Yuan;Energy Conversion and Management,2015