Bayesian Optimization-Based LSTM for Short-Term Heating Load Forecasting
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- Cui, Xuyang & Zhu, Junda & Jia, Lifu & Wang, Jiahui & Wu, Yusen, 2024. "A novel heat load prediction model of district heating system based on hybrid whale optimization algorithm (WOA) and CNN-LSTM with attention mechanism," Energy, Elsevier, vol. 312(C).
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Keywords
Bayesian optimization; load forecasting; recurrent neural network; time series;All these keywords.
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