Hybrid deep learning models for time series forecasting of solar power

被引:0
|
作者
Diaa Salman
Cem Direkoglu
Mehmet Kusaf
Murat Fahrioglu
机构
[1] Palestine Technical University-Kadoorie,Department of Electrical Engineering, College of Engineering and Technology
[2] Middle East Technical University,Department of Electrical and Electronics Engineering
[3] Cyprus International University,Department of Electrical and Electronic Engineering
来源
关键词
Deep learning; Time series; Forecasting; Hybrid models; Solar power;
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学科分类号
摘要
Forecasting solar power production accurately is critical for effectively planning and managing renewable energy systems. This paper introduces and investigates novel hybrid deep learning models for solar power forecasting using time series data. The research analyzes the efficacy of various models for capturing the complex patterns present in solar power data. In this study, all of the possible combinations of convolutional neural network (CNN), long short-term memory (LSTM), and transformer (TF) models are experimented. These hybrid models also compared with the single CNN, LSTM and TF models with respect to different kinds of optimizers. Three different evaluation metrics are also employed for performance analysis. Results show that the CNN–LSTM–TF hybrid model outperforms the other models, with a mean absolute error (MAE) of 0.551% when using the Nadam optimizer. However, the TF–LSTM model has relatively low performance, with an MAE of 16.17%, highlighting the difficulties in making reliable predictions of solar power. This result provides valuable insights for optimizing and planning renewable energy systems, highlighting the significance of selecting appropriate models and optimizers for accurate solar power forecasting. This is the first time such a comprehensive work presented that also involves transformer networks in hybrid models for solar power forecasting.
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页码:9095 / 9112
页数:17
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