摘要
Achieving fully autonomous driving in urban traffic scenarios is a significant challenge that necessitates balancing safety, efficiency, and compliance with traffic regulations. In this letter, we introduce a novel Curriculum Residual Hierarchical Reinforcement Learning (CR-HRL) framework. It integrates a rule-based planning model as a guiding mechanism, while a deep reinforcement learning algorithm generates supplementary residual strategies. This combination enables the RL agent to perform safe and efficient overtaking in complex traffic scenarios. Furthermore, we implement a detailed three-stage curriculum learning strategy that enhances the training process. By progressively increasing task complexity, the curriculum strategy effectively guides the exploration of autonomous vehicles and improves the reusability of sub-strategies. The effectiveness of the CR-HRL framework is confirmed through ablation experiments. Comparative experiments further highlight the superior efficiency and decision-making capabilities of our framework over traditional rule-based and RL baseline methods. Tests conducted with actual vehicles also demonstrate its practical applicability in real-world settings.
| 源语言 | 英语 |
|---|---|
| 页(从-至) | 9454-9461 |
| 页数 | 8 |
| 期刊 | IEEE Robotics and Automation Letters |
| 卷 | 9 |
| 期 | 11 |
| DOI | |
| 出版状态 | 已出版 - 2024 |
学术指纹
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