A DRL-based Ecological Driving Strategy for Series Hybrid Energy Vehicle Including Battery Degradation

Yi Fan, Hongwen He, Zexing Wang, Jiankun Peng, Hailong Zhang, Weiqi Chen

Research output: Contribution to journalConference articlepeer-review

Abstract

An ecological driving strategy considered battery State-of-Health is proposed based on Deep reinforcement learning. Not only does this strategy try to minimize fuel consumption while maintaining the safe car-following sate, it also seeks to lower the battery aging speed. In order to optimize the car-following and energy management performance, reward functions are developed by combing driving features of car-following, engine and battery characteristics. The agent maximizes the accumulated reward by interacting with the simulation environment to explore the action space. While controlling the SHEV to maintain a safe car-following distance, the proposed method reduces the effective Ah-throughput by 15 -57.6% and only increases the fuel consumption within 5% compared with the case of achieving the best fuel economy. In addition, this method is proven to achieve similar results in different driving cycles.

Original languageEnglish
JournalEnergy Proceedings
Volume20
DOIs
Publication statusPublished - 2021
Event13th International Conference on Applied Energy, ICAE 2021 - Bangkok, Thailand
Duration: 29 Nov 20212 Dec 2021

Keywords

  • Energy management strategy
  • battery state-of-health
  • car-following
  • deep reinforcement learning

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