Solar irradiance is the main factor affecting the output of a photovoltaic (PV) power station, which is chiefly determined by the clouddistribution over the power station. For ultra-short-term, especially the intro-h...
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Solar irradiance is the main factor affecting the output of a photovoltaic (PV) power station, which is chiefly determined by the clouddistribution over the power station. For ultra-short-term, especially the intro-hour time scale irradiance forecasting, ground-basedcloud image is considered as a very necessary data as Global Horizontal Irradiance (GHI). However, the information content in the image is much higher than that of GHI record, and there is even a difference in magnitude between them. Therefore, how to effectively extract the key features in the cloud images and fuse them with GHI record data is the decisive factor affecting the performance of the forecasting model. Here, a novel convolutional auto-encoder basedclouddistributionfeature (CDF) extractionmethod is first proposed. Then for feature fusion part, an LSTM-FUSION irradiance forecasting model is established based on long short-term memory (LSTM) neural network and feature fusion by time steps considering the one-to-one correlation between CDFs and GHI. Finally, a novel determination method of input time step length based on attention distribution analysis is also proposed. Simulation results show that the proposed LSTM-FUSION model is overall superior to the benchmark models.
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