基于注意力机制的深度非线性集合范式,用于风能预测的强化特征提取方法

IF 1.9 4区 工程技术 Q4 ENERGY & FUELS
Jujie Wang, Yafen Liu
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引用次数: 0

摘要

风能固有的不确定性始终阻碍着风能的发展和电力系统的平稳运行。因此,可靠的超短期风电预测对风能发展至关重要。本研究提出了一种基于双层分解技术、特征重构、智能优化算法和深度学习的两阶段非线性集合范式,以提高超短期风电预测精度。首先,使用两种不同的信号分解技术进行处理,可以进一步过滤掉原始信号中的噪声,并充分捕捉其中的不同特征。其次,利用样本熵理论对双重分解得到的多个分量进行重构,并重新组合成多个复杂度相似的特征子序列,以简化预测模型的输入变量。最后,基于两阶段预测策略的思想,将布谷鸟搜索算法和注意力机制优化的长短期记忆模型分别应用于特征子序列的预测和非线性积分,得到最终的预测结果。仿真实验使用了两组来自中国辽宁省风电场的数据。最终的实证结果表明,与其他模型相比,建议的风电预测模型具有更高的预测精度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An attention mechanism based deep nonlinear ensemble paradigm of strengthened feature extraction method for wind power prediction
The inherent uncertainty of wind power always hampers difficulties in the development of wind energy and the smooth operation of power systems. Therefore, reliable ultra-short-term wind power prediction is crucial for the development of wind energy. In this research, a two-stage nonlinear ensemble paradigm based on double-layer decomposition technology, feature reconstruction, intelligent optimization algorithm, and deep learning is suggested to increase the prediction accuracy of ultra-short-term wind power. First, using two different signal decomposition techniques for processing can further filter out noise in the original signal and fully capture different features within it. Second, the multiple components obtained through double decomposition are reconstructed using sample entropy theory and reassembled into several feature subsequences with similar complexity to simplify the input variables of the prediction model. Finally, based on the idea of a two-stage prediction strategy, the cuckoo search algorithm and the attention mechanism optimized long- and short-term memory model are applied to the prediction of feature subsequences and nonlinear integration, respectively, to obtain the final prediction results. Two sets of data from wind farms in Liaoning Province, China are used for simulation experiments. The final empirical findings indicate that, in comparison to other models, the suggested wind power prediction model has a greater prediction accuracy.
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来源期刊
Journal of Renewable and Sustainable Energy
Journal of Renewable and Sustainable Energy ENERGY & FUELS-ENERGY & FUELS
CiteScore
4.30
自引率
12.00%
发文量
122
审稿时长
4.2 months
期刊介绍: The Journal of Renewable and Sustainable Energy (JRSE) is an interdisciplinary, peer-reviewed journal covering all areas of renewable and sustainable energy relevant to the physical science and engineering communities. The interdisciplinary approach of the publication ensures that the editors draw from researchers worldwide in a diverse range of fields. Topics covered include: Renewable energy economics and policy Renewable energy resource assessment Solar energy: photovoltaics, solar thermal energy, solar energy for fuels Wind energy: wind farms, rotors and blades, on- and offshore wind conditions, aerodynamics, fluid dynamics Bioenergy: biofuels, biomass conversion, artificial photosynthesis Distributed energy generation: rooftop PV, distributed fuel cells, distributed wind, micro-hydrogen power generation Power distribution & systems modeling: power electronics and controls, smart grid Energy efficient buildings: smart windows, PV, wind, power management Energy conversion: flexoelectric, piezoelectric, thermoelectric, other technologies Energy storage: batteries, supercapacitors, hydrogen storage, other fuels Fuel cells: proton exchange membrane cells, solid oxide cells, hybrid fuel cells, other Marine and hydroelectric energy: dams, tides, waves, other Transportation: alternative vehicle technologies, plug-in technologies, other Geothermal energy
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