Improving Wind Power Generation Forecasts: A Hybrid ANN-Clustering-PSO Approach
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- Bin Li & Haoran Li & Zhencheng Liang & Xiaoqing Bai, 2024. "Load Day-Ahead Automatic Generation Control Reserve Capacity Demand Prediction Based on the Attention-BiLSTM Network Model Optimized by Improved Whale Algorithm," Energies, MDPI, vol. 17(2), pages 1-25, January.
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Keywords
wind power generation; wind speed forecasting; artificial neural network; machine learning; clustering algorithm; particle swarm optimization; mesoscale data;All these keywords.
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