Energy management optimization for connected hybrid electric vehicle using offline reinforcement learning

Hongwen He*, Zegong Niu, Yong Wang, Ruchen Huang, Yiwen Shou

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

12 引用 (Scopus)

摘要

Energy management strategy (EMS) is critical to ensure the long-term energy economy of hybrid electric vehicles. The classical deep reinforcement learning algorithms exist many issues such as the safety constraint and the simulation-to-real gap, resulting in difficulties in applications to industrial tasks. Thus, this paper proposes a novel EMS and a policy updating method based on the offline deep reinforcement learning algorithm to address the energy optimization problem. Firstly, the batch-constrained deep Q-learning algorithm is applied to provide a solution training the control strategy based on the existing datasets without interaction with the environment. Secondly, the EMS updating method is proposed to improve the adaptability under complicated driving cycles. The Jensen–Shannon divergence is introduced to determine when offline control strategy updates in real time. Finally, the optimality and effectiveness of the proposed EMS are validated, and the real-time and adaptive performance of the proposed method is also verified. The results indicate that the proposed EMS can learn a superior policy from fixed data, and the proposed updating method can utilize the real-time data to update the offline policy approaching the online deep reinforcement learning-based strategy in energy consumption.

源语言英语
文章编号108517
期刊Journal of Energy Storage
72
DOI
出版状态已出版 - 25 11月 2023

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