Journal ArticleOpen Access
Very short-term forecasting of wind power generation using hybrid deep learning model
Author Affiliations
Dhaka University of Engineering & Technology
Published InGriffith Research Online (Griffith University, Queensland, Australia)
Year2021
Citations186
Abstract
Accurate forecasting of wind power generation plays a key role in improving the operation and management of a power system network and thereby its reliability and security. However, predicting wind power is complex due to the existence of high non-linearity in wind speed that eventually relies on prevailing weather conditions. In this paper, a novel hybrid deep learning model is proposed to improve the prediction accuracy of very short-term wind power generation for the Bodangora wind farm located in New South Wales, Australia. The hybrid model consists of convolutional layers, gated recurrent unit (GRU) layers and a fully connected neural network. The convolutional layers have the ability to automatically learn complex features from raw data while the GRU layers are…
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