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http://dx.doi.org/10.7838/jsebs.2019.24.1.001

Deep Learning Based Prediction Method of Long-term Photovoltaic Power Generation Using Meteorological and Seasonal Information  

Lee, Donghun (Department of Industrial and Management Engineering, Incheon National University)
Kim, Kwanho (Department of Industrial and Management Engineering, Incheon National University)
Publication Information
The Journal of Society for e-Business Studies / v.24, no.1, 2019 , pp. 1-16 More about this Journal
Abstract
Recently, since responding to meteorological changes depending on increasing greenhouse gas and electricity demand, the importance prediction of photovoltaic power (PV) is rapidly increasing. In particular, the prediction of PV power generation may help to determine a reasonable price of electricity, and solve the problem addressed such as a system stability and electricity production balance. However, since the dynamic changes of meteorological values such as solar radiation, cloudiness, and temperature, and seasonal changes, the accurate long-term PV power prediction is significantly challenging. Therefore, in this paper, we propose PV power prediction model based on deep learning that can be improved the PV power prediction performance by learning to use meteorological and seasonal information. We evaluate the performances using the proposed model compared to seasonal ARIMA (S-ARIMA) model, which is one of the typical time series methods, and ANN model, which is one hidden layer. As the experiment results using real-world dataset, the proposed model shows the best performance. It means that the proposed model shows positive impact on improving the PV power forecast performance.
Keywords
Photovoltaic Power Prediction; Deep Learning; Machine Learning; Time Series Analysis; Seasonal ARIMA Model;
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Times Cited By KSCI : 2  (Citation Analysis)
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