Solar Energy Production Forecasting Based on a Hybrid CNN-LSTM-Transformer Model

IF 2.2 3区 数学 Q1 MATHEMATICS Mathematics Pub Date : 2023-01-28 DOI:10.3390/math11030676
Elham M. Al-Ali, Yassine Hajji, Yahia Said, Manel Hleili, Amal M. Alanzi, A. H. Laatar, M. Atri
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引用次数: 5

Abstract

Green energy is very important for developing new cities with high energy consumption, in addition to helping environment preservation. Integrating solar energy into a grid is very challenging and requires precise forecasting of energy production. Recent advances in Artificial Intelligence have been very promising. Particularly, Deep Learning technologies have achieved great results in short-term time-series forecasting. Thus, it is very suitable to use these techniques for solar energy production forecasting. In this work, a combination of a Convolutional Neural Network (CNN), a Long Short-Term Memory (LSTM) network, and a Transformer was used for solar energy production forecasting. Besides, a clustering technique was applied for the correlation analysis of the input data. Relevant features in the historical data were selected using a self-organizing map. The hybrid CNN-LSTM-Transformer model was used for forecasting. The Fingrid open dataset was used for training and evaluating the proposed model. The experimental results demonstrated the efficiency of the proposed model in solar energy production forecasting. Compared to existing models and other combinations, such as LSTM-CNN, the proposed CNN-LSTM-Transformer model achieved the highest accuracy. The achieved results show that the proposed model can be used as a trusted forecasting technique that facilitates the integration of solar energy into grids.
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基于CNN-LSTM-Transformer混合模型的太阳能产量预测
绿色能源除了有助于环境保护外,对于发展高能耗的新城市非常重要。将太阳能并入电网是非常具有挑战性的,需要对能源生产进行精确的预测。人工智能的最新进展是非常有希望的。特别是深度学习技术在短期时间序列预测方面取得了很大的成果。因此,这些技术非常适合用于太阳能产量预测。在这项工作中,将卷积神经网络(CNN)、长短期记忆(LSTM)网络和变压器相结合,用于太阳能产量预测。此外,采用聚类技术对输入数据进行相关性分析。使用自组织映射选择历史数据中的相关特征。采用CNN-LSTM-Transformer混合模型进行预测。使用Fingrid开放数据集对所提出的模型进行训练和评估。实验结果证明了该模型在预测太阳能产量方面的有效性。与现有模型和其他组合(如LSTM-CNN)相比,本文提出的CNN-LSTM-Transformer模型达到了最高的精度。结果表明,该模型可作为一种可靠的预测技术,促进太阳能并网。
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来源期刊
Mathematics
Mathematics Mathematics-General Mathematics
CiteScore
4.00
自引率
16.70%
发文量
4032
审稿时长
21.9 days
期刊介绍: Mathematics (ISSN 2227-7390) is an international, open access journal which provides an advanced forum for studies related to mathematical sciences. It devotes exclusively to the publication of high-quality reviews, regular research papers and short communications in all areas of pure and applied mathematics. Mathematics also publishes timely and thorough survey articles on current trends, new theoretical techniques, novel ideas and new mathematical tools in different branches of mathematics.
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