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Forecasting Solar Power Using Long-Short Term Memory and Convolutional Neural Networks

DOI:10.1109/ACCESS.2018.2883330 期刊:IEEE Access 出版年份:2018 更新时间:2025-09-23 15:22:29
摘要: As solar photovoltaic (PV) generation becomes cost-effective, solar power comes into its own as the alternative energy with the potential to make up a larger share of growing energy needs. Consequently, operations and maintenance cost now have a large impact on the profit of managing power modules, and the energy market participants need to estimate the solar power in short or long terms of future. In this paper, we propose a solar power forecasting technique by utilizing convolutional neural networks and long–short-term memory networks recently developed for analyzing time series data in the deep learning communities. Considering that weather information may not be always available for the location where PV modules are installed and sensors are often damaged, we empirically confirm that the proposed method predicts the solar power well with roughly estimated weather data obtained from national weather centers as well as it works robustly without sophisticatedly preprocessed input to remove outliers.
作者: Woonghee Lee,Keonwoo Kim,Junsep Park,Jinhee Kim,Younghoon Kim
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To develop an effective solar power forecasting technique using convolutional neural networks (CNNs) and long-short term memory (LSTM) networks to predict the next day's solar power based on time series data from photovoltaic inverters and weather centers, addressing issues of data availability and preprocessing.

The proposed CNN+LSTM network outperforms traditional regression methods and a state-of-the-art deep learning method (AE+LSTM) in solar power forecasting, demonstrating robustness with minimal preprocessing and the ability to utilize coarsely estimated weather data. This approach is effective for practical applications in energy management and market operations.

The study relies on data from specific locations in South Korea, which may limit generalizability. The preprocessing is minimal, but outliers could still affect performance. Computational cost is high due to the use of deep learning models, and the method may not perform well with very noisy or incomplete data without additional refinement.

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