Lifespan-consciousness and minimum-consumption coupled energy management strategy for fuel cell hybrid vehicles via deep reinforcement learning

Weiwei Huo, Dong Chen*, Sheng Tian*, Jianwei Li, Tianyu Zhao, Bo Liu

*Corresponding author for this work

Research output: Contribution to journalArticlepeer-review

53 Citations (Scopus)
Plum Print visual indicator of research metrics
  • Citations
    • Citation Indexes: 53
  • Captures
    • Readers: 22
see details

Abstract

Energy management strategy (EMS) based on optimized deep reinforcement learning plays a critical role in minimizing fuel consumption and prolonging the fuel cell stack lifespan for fuel cell hybrid vehicles. The deep Q-learning (DQL) and deep deterministic policy gradient (DDPG) algorithms with priority experience replay are proposed in this research. The factors of fuel economy and power fluctuation are incorporated into the multi-objective reward functions to decline the fuel consumption and extend the lifetime of fuel cell stack. In addition, the degradation rate is introduced to reflect the lifetime of fuel cell stack. Furthermore, compared to the referenced optimally energy management strategy (dynamic planning), the DQL-based and DDPG-based EMS with prioritized experience replay (DQL-PER, DDPG-PER) are evaluated in hydrogen consumption and cumulative degradation of fuel cell stack under four driving cycles, FTP75, US06-2, NEDC and LA92-2, respectively. The training results reveal that the DQL-PER-based EMS performances better under FTP75 and US06-2 driving cycles, whereas DDPG-PER-based EMS has better performance under NEDC driving cycle, which provide a potential for applying the proposed algorithm into multi-cycles.

Original languageEnglish
Pages (from-to)24026-24041
Number of pages16
JournalInternational Journal of Hydrogen Energy
Volume47
Issue number57
DOIs
Publication statusPublished - 5 Jul 2022

Keywords

  • DDPG-PER algorithm
  • DQL-PER algorithm
  • Energy management strategy
  • Fuel cell hybrid vehicle
  • Fuel cell stack lifetime
  • Minimum fuel consumption

Fingerprint

Dive into the research topics of 'Lifespan-consciousness and minimum-consumption coupled energy management strategy for fuel cell hybrid vehicles via deep reinforcement learning'. Together they form a unique fingerprint.

Cite this

Huo, W., Chen, D., Tian, S., Li, J., Zhao, T., & Liu, B. (2022). Lifespan-consciousness and minimum-consumption coupled energy management strategy for fuel cell hybrid vehicles via deep reinforcement learning. International Journal of Hydrogen Energy, 47(57), 24026-24041. https://doi.org/10.1016/j.ijhydene.2022.05.194