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Optimizing deep neural network architectures for renewable energy forecasting

Sunawar KhanDepartment of Software Engineering, Islamia University of Bahawalpur, Bahawalnagar, 62300, PakistanTehseen MazharDepartment of Computer Science and Information Technology, School Education Department, Government of Punjab, Layyah, 31200, PakistanTariq ShahzadDepartment of Computer Science, COMSATS University Islamabad, Sahiwal Campus, Sahiwal, 57000, PakistanWajahat WaheedAhsen WaheedDepartment of Computer Science, COMSATS University Islamabad, Islamabad Campus 45550, PakistanMamoon M. SaeedDepartment of Communications and Electronics Engineering, Faculty of Engineering, University of Modern Sciences (UMS), Sana’a 00967, YemenHabib HamamBridges for Academic Excellence , Spectrum, Tunis, Tunisia
2024en
ABI

Аннотация

An accurate renewable energy output forecast is essential for energy efficiency and power system stability. Long Short-Term Memory(LSTM), Bidirectional LSTM(BiLSTM), Gated Recurrent Unit(GRU), and Convolutional Neural Network-LSTM(CNN-LSTM) Deep Neural Network (DNN) topologies are tested for solar and wind power production forecasting in this study. ARIMA was compared to the models. This study offers a unique architecture for Deep Neural Networks (DNNs) that are specifically tailored for renewable energy forecasting, optimizing accuracy by advanced hyperparameter tuning and the incorporation of essential meteorological and temporal variables. The optimized LSTM model outperformed others, with MAE (0.08765), MSE (0.00876), RMSE (0.09363), MAPE (3.8765), and R 2 (0.99234) values. The GRU, CNN-LSTM, and BiLSTM models predicted well. Meteorological and time-based factors enhanced model accuracy. The addition of sun and wind data improved its prediction. The results show that advanced deep neural network (DNN) models can predict renewable energy, highlighting the importance of carefully selecting characteristics and fine-tuning the model. This work improves renewable energy estimates to promote a more reliable and environmentally sustainable electricity system.

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