AIP Advances (Nov 2023)

An estimation method for the state-of-charge of lithium-ion battery based on PSO-LSTM

  • Meng Dang,
  • Chuanwei Zhang,
  • Zhi Yang,
  • Jianlong Wang,
  • Yikun Li,
  • Jing Huang

DOI
https://doi.org/10.1063/5.0162519
Journal volume & issue
Vol. 13, no. 11
pp. 115204 – 115204-12

Abstract

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The accuracy of state-of-charge (SOC) estimation will affect the performance of the battery management system. The higher the accuracy the better the performance. To improve the accuracy of SOC estimation, a particle swarm optimization (PSO) based method is proposed to optimize the long short term memory. First, a PSO-Long Short Term Memory (LSTM) estimation model is established by the PSO algorithm, thereby achieving optimal iteration parameters of the model. Then, the PSO-LSTM estimation model is simulated under different working conditions and temperatures. Finally, the voltage, current, and other discharge data of the lithium-ion battery are input into the PSO-LSTM neural network model to compare with the LSTM algorithm. The results show that the estimation accuracy of the optimized PSO-LSTM algorithm model and extended Kalman filter is 2.1% and 1.5%, respectively. The accuracy is improved.