Energy management in HDHEV with dual APUs: Enhancing soft actor-critic using clustered experience replay and multi-dimensional priority sampling

Dongfang Zhang, Wei Sun, Yuan Zou*, Xudong Zhang

*此作品的通讯作者

科研成果: 期刊稿件文章同行评审

1 引用 (Scopus)

摘要

Traditional experience sampling methods in reinforcement learning often overlook sample diversity, which limits learning effectiveness. This research proposes an Enhanced Soft Actor-Critic (ESAC) algorithm for energy management in Heavy-Duty Hybrid Electric Vehicles equipped with dual Auxiliary Power Units. ESAC addresses the limitations of existing methods by integrating multi-dimensional evaluation metrics and the BIRCH clustering algorithm for online experience sampling. The proposed approach optimizes performance in complex multi-power source systems, ensuring diverse sample selection and enhancing learning capacity. Comparative analyses of ESAC against TD3, SAC, and SAC-BIRCH-PER demonstrate that ESAC achieves superior convergence performance, with a nearly 10-episode faster convergence rate than Prioritized Experience Replay. Additionally, ESAC shows significant reductions in fuel consumption—up to 5.32 % compared to the dynamic programming benchmark—outperforming SAC and TD3 by 10.54 % and 8.84 %, respectively. These results highlight that enhancing data diversity and prioritization not only stabilizes learning but also optimizes fuel efficiency in low-speed, high-torque conditions, thereby providing a robust solution for real-world energy management challenges.

源语言英语
文章编号134926
期刊Energy
319
DOI
出版状态已出版 - 15 3月 2025

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