Li Guomin, Yu Leyi, Zhang Ying, Sun Peng, Li Ruixuan, Zhang Yagang, Li Gengyin, Wang Pengfei
State Key Laboratory of Alternate Electrical Power System With Renewable Energy Sources, North China Electric Power University, Beijing, 102206, China.
Hebei Key Laboratory of Physics and Energy Technology, North China Electric Power University, Box 205, Baoding, 071003, Hebei, China.
Environ Sci Pollut Res Int. 2023 Mar;30(14):41937-41953. doi: 10.1007/s11356-023-25194-3. Epub 2023 Jan 14.
In recent years, traditional energy sources have caused a variety of negative impacts on the environment, and reducing carbon emissions is a top priority. The development of renewable energy technology is the key to transform the energy structure. Renewable energy represented by wind energy and photovoltaics has abundant reserves so they are connected to the grid system on a large scale. However, because of natural energy's randomness, renewable energy power generation poses potential risks to energy production and grid security. By making short-term forecasts of renewable energy generation power, the uncertainty of energy generation can be reduced, and it is crucial to study renewable energy forecasting techniques. This paper proposes an integrated forecasting system for renewable energy sources. Firstly, ensemble empirical mode decomposition is used for data preprocessing, and stationarity analysis is used for modal identification; then, support vector regression optimized by sparrow search algorithm and statistical methods are combined to make forecast according to different characteristics of the series respectively; finally, the feasibility of this method in renewable energy time series prediction is verified by experiments. The experiments prove that the proposed model effectively improves the accuracy and prediction performance on ultra-short-term renewable energy forecasting; and it has good applicability and competitiveness with different forecasting scenarios and characteristics, which satisfy the actual forecasting requirements in terms of operational efficiency and accuracy, thus providing a technical basis for the effective utilization of renewable energy.
近年来,传统能源对环境造成了各种负面影响,减少碳排放是当务之急。可再生能源技术的发展是转变能源结构的关键。以风能和光伏为代表的可再生能源储量丰富,因此它们被大规模接入电网系统。然而,由于自然能源的随机性,可再生能源发电给能源生产和电网安全带来了潜在风险。通过对可再生能源发电功率进行短期预测,可以降低能源发电的不确定性,研究可再生能源预测技术至关重要。本文提出了一种可再生能源综合预测系统。首先,采用总体经验模态分解进行数据预处理,并使用平稳性分析进行模态识别;然后,将麻雀搜索算法优化的支持向量回归与统计方法相结合,分别根据序列的不同特征进行预测;最后,通过实验验证了该方法在可再生能源时间序列预测中的可行性。实验证明,所提出的模型有效地提高了超短期可再生能源预测的准确性和预测性能;并且在不同的预测场景和特征下具有良好的适用性和竞争力,在运行效率和准确性方面满足实际预测需求,从而为可再生能源的有效利用提供了技术依据。