1. Deep Learning Based Surface Irradiance Mapping Model for Solar PV Power Forecasting Using Sky Image.
- Author
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Zhen, Zhao, Liu, Jiaming, Zhang, Zhanyao, Wang, Fei, Chai, Hua, Yu, Yili, Lu, Xiaoxing, Wang, Tieqiang, and Lin, Yuzhang
- Subjects
DEEP learning ,SOLAR energy ,FEATURE extraction ,NUMERICAL weather forecasting ,K-means clustering ,SKY ,ELECTRIC power distribution grids - Abstract
With the increase of solar photovoltaic (PV) penetration in power system, the impact of random fluctuation of PV power on the secure operation of power grid becomes more and more serious. High-precision PV power forecasting can effectively promote the grid's accommodation of PV power generation. Cloud is the most important factor affecting the surface irradiance and PV power. For the ultra-short-term solar PV power forecast considering the influence of cloud movement, it is necessary to be able to obtain the surface irradiance according to the sky cloud observation data. Therefore, in order to accurately achieve the real-time mapping relationship between sky image and surface irradiance, a hybrid mapping model based on deep learning applied for solar PV power forecasting is proposed in this article. First, the sky image data are clustered based on the feature extraction of convolutional autoencoder and K-means clustering algorithm after preprocess stage. Second, a hybrid mapping model based on deep learning methods are established for surface irradiance. Finally, the simulation results are compared and evaluated with different deep learning methods (CNN, LSTM, and ANN). The results show that the proposed model in this article has higher accuracy and can maintain robustness under different weather conditions. [ABSTRACT FROM AUTHOR]
- Published
- 2020
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