A Novel Correlation-optimized Deep Learning Method for Wind Speed
Forecast
- URL: http://arxiv.org/abs/2306.01986v2
- Date: Fri, 9 Jun 2023 13:46:50 GMT
- Title: A Novel Correlation-optimized Deep Learning Method for Wind Speed
Forecast
- Authors: Yang Yang, Jin Lang, Jian Wu, Yanyan Zhang, Xiang Zhao
- Abstract summary: The increasing installation rate of wind power poses great challenges to the global power system.
Deep learning is progressively applied to the wind speed prediction.
New cognition and memory units (CMU) are designed to reinforce traditional deep learning framework.
- Score: 12.61580086941575
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: The increasing installation rate of wind power poses great challenges to the
global power system. In order to ensure the reliable operation of the power
system, it is necessary to accurately forecast the wind speed and power of the
wind turbines. At present, deep learning is progressively applied to the wind
speed prediction. Nevertheless, the recent deep learning methods still reflect
the embarrassment for practical applications due to model interpretability and
hardware limitation. To this end, a novel deep knowledge-based learning method
is proposed in this paper. The proposed method hybridizes pre-training method
and auto-encoder structure to improve data representation and modeling of the
deep knowledge-based learning framework. In order to form knowledge and
corresponding absorbers, the original data is preprocessed by an optimization
model based on correlation to construct multi-layer networks (knowledge) which
are absorbed by sequence to sequence (Seq2Seq) models. Specifically, new
cognition and memory units (CMU) are designed to reinforce traditional deep
learning framework. Finally, the effectiveness of the proposed method is
verified by three wind prediction cases from a wind farm in Liaoning, China.
Experimental results show that the proposed method increases the stability and
training efficiency compared to the traditional LSTM method and LSTM/GRU-based
Seq2Seq method for applications of wind speed forecasting.
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