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An optimized informer model design for electric vehicle SOC prediction

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  • Xin Xie
  • Feng Huang
  • Yefeng Long
  • Youyuan Peng
  • Wenjuan Zhou

Abstract

SOC prediction is of great value to electric vehicle status assessment. Informer model is better than other models in SOC prediction, but there is still a gap in practical application. Therefore, based on the health assessment algorithm, a new optimized Informer model is proposed to predict SOC. Firstly, the health assessment is carried out through the historical running data of the electric vehicle to obtain the health matrix. Then, the health matrix is used to improve Encoder and Decoder modules and improve the prediction accuracy and speed of Informer model. Subsequently, the health matrix is utilized to optimize the prediction logic, reduce the influence of truncation error, and further improve the SOC prediction accuracy. Finally, using the Informer model before and after optimization, SOC prediction is performed using four different datasets. The results indicate that after optimizing the En-De module of Informer, prediction accuracy improved by approximately 15%, with prediction speed increasing by about 100%. Furthermore, optimizing the prediction logic to reduce truncation error further enhanced Informer’s prediction accuracy by around 20%.

Suggested Citation

  • Xin Xie & Feng Huang & Yefeng Long & Youyuan Peng & Wenjuan Zhou, 2025. "An optimized informer model design for electric vehicle SOC prediction," PLOS ONE, Public Library of Science, vol. 20(3), pages 1-35, March.
  • Handle: RePEc:plo:pone00:0314255
    DOI: 10.1371/journal.pone.0314255
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