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An Effective Model Based on STmixing-LSTM for Short Term Wind Power Prediction

Abstract

The precision of wind energy forecasting plays a vital role in maintaining grid security and optimizing reserve capacity distribution. The variability and intermittent characteristics of wind resources pose significant challenges to conventional power prediction methods that rely on historical pattern analysis. Therefore, this paper proposed a hybrid model named STmixing-LSTM for wind power prediction. Firstly, the initial input data undergoes a season-trend (ST) decomposition. The decomposed data is further mixed. Then the series are predicted by the decoder, which is consisted of a CNN layer and a LSTM layer. Case studies of forecasting using one wind farm dataset in China are conducted. The experiment result shows that our novel model proposed in this study can predict short-term wind power more accurately.

Category

Academic chapter

Language

English

Author(s)

  • Tianci Li
  • Fuming Peng
  • Hao Quan
  • Xiang Ma

Affiliation

  • SINTEF Industry / Metal Production and Processing
  • Nanjing University of Science and Technology

Year

2025

Publisher

IEEE (Institute of Electrical and Electronics Engineers)

Book

Proceedings of the 4th Conference on Fully Actuated System Theory and Applications (FASTA2025)

ISBN

9798331526924

Page(s)

1457 - 1462

View this publication at Norwegian Research Information Repository