Frontiers in Energy Research (Oct 2024)

Research on urban power load forecasting based on improved LSTM

  • Zhou Zhenglei,
  • Chen Jun,
  • Yang Zhou,
  • Wu Wenguang,
  • Ding Hong

DOI
https://doi.org/10.3389/fenrg.2024.1443814
Journal volume & issue
Vol. 12

Abstract

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In this paper, the maximal information coefficient method-variational mode decomposition-bidirectional long short term memory network-adaptive boosting (MIC-VMD-Bi-LSTM-Adaboost) algorithm is used to forecast the power load. Firstly, MIC is used to determine the correlation degree of meteorological parameters influencing power load. Features having a high correlation degree are then chosen to be input vectors. Secondly, the input characteristics are decomposed using VMD, and five distinct IMF components are retrieved in order to remove unnecessary information. Lastly, different assessment indices are computed and the power load is predicted using the Bi-LSTM-Adaboost method. In order to determine the benefit of the approach used in this work, the outcomes of LSTM, Bi-LSTM, and LSTM-Adaboost are compared concurrently.

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