Short-Term Wind Power Forecasting by Using Radial Based Artificial Neural Networks with Harmony Search Algorithm: Belen Region
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Turkish Journal of Engineering
Reference24 articles.
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1. Wind speed prediction using LSTM and ARIMA time series analysis models: A case study of Gelibolu;Turkish Journal of Engineering;2024-07-28
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