Contextual feature fusion convolutional transformer complementation for PV power prediction
Yidi Wu,
Feixia Zhang,
Di Wu
et al.
Abstract:Accurate forecasting of photovoltaic power generation can facilitate the integration of photovoltaic into modern power systems. In this paper, a Contextual Feature Fusion Convolutional Transformer Complementary for the Photovoltaic Power Generation Prediction Model is proposed. Historical photovoltaic data, historical weather, and predicted weather data are input for normalization and convolution operations. The computed positional encoding is embedded into the convolved feature information. The feature inform… Show more
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