Ultra-short-term wind farm cluster power prediction based on FC-GCN and trend-aware switching mechanism
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DOI: 10.1016/j.energy.2024.130238
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- Liu, Zhi-Feng & Liu, You-Yuan & Chen, Xiao-Rui & Zhang, Shu-Rui & Luo, Xing-Fu & Li, Ling-Ling & Yang, Yi-Zhou & You, Guo-Dong, 2024. "A novel deep learning-based evolutionary model with potential attention and memory decay-enhancement strategy for short-term wind power point-interval forecasting," Applied Energy, Elsevier, vol. 360(C).
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Keywords
Ultra-short-term wind farm cluster power prediction; Probability prediction; Graph convolutional network; Fluctuation correlation; Trend-aware;All these keywords.
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