Advanced Search
GAO Sheng, XU Peihua, CHEN Zhenghong, et al. A short-term calgorithm based on improved LSTM neural network [J]. Southern energy construction, 2024, 11(1): 112-121. DOI: 10.16516/j.ceec.2024.1.12
Citation: GAO Sheng, XU Peihua, CHEN Zhenghong, et al. A short-term calgorithm based on improved LSTM neural network [J]. Southern energy construction, 2024, 11(1): 112-121. DOI: 10.16516/j.ceec.2024.1.12

A Short-Term Calgorithm Based on Improved LSTM Neural Network

  •   Introduction  The volatility and intermittency of wind energy pose significant challenges for large-scale wind power integration. An effective approach to address this issue is to provide accurate wind power forecasting.
      Method  In response to this challenge, this study proposed a wind power forecasting model for deep learning neural networks based on an improved LSTM (Long Short-Term Memory) architecture. The model incorporated a wind power forecasting approach that included independently developed data anomaly detection and processing, wind speed feature extraction and hyperparameter tuning. To enhance the neural network model's ability to accurately learn the impact of wind speed features on wind power, a feature engineering method combining feature screening and feature augmentation was also defined.
      Result  The simulation results demonstrate that the proposed data cleaning and data augmentation algorithm can enhance the accuracy of various machine learning algorithms by approximately 5%. Furthermore, the proposed improved LSTM neural network model, after data cleaning, outperforms traditional algorithms and state-of-the-art neural network algorithms in the industry, achieving a 2.5% increase in accuracy.
      Conclusion  The improved approach not only exhibits robust capability in cleaning noisy data but also consistently outperforms other algorithms in terms of forecasting accuracy across all experiments. This model provides valuable guidance for practical applications in the field of wind power forecasting.
  • loading

Catalog

    Turn off MathJax
    Article Contents

    /

    DownLoad:  Full-Size Img  PowerPoint
    Return
    Return