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Risk-Aware Reinforcement Learning for Autonomous Driving: Improving Safety When Driving through Intersection

25 March 2025
Bo Leng
Ran Yu
Wei Han
Lu Xiong
Zhuoren Li
Hailong Huang
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Abstract

Applying reinforcement learning to autonomous driving has garnered widespread attention. However, classical reinforcement learning methods optimize policies by maximizing expected rewards but lack sufficient safety considerations, often putting agents in hazardous situations. This paper proposes a risk-aware reinforcement learning approach for autonomous driving to improve the safety performance when crossing the intersection. Safe critics are constructed to evaluate driving risk and work in conjunction with the reward critic to update the actor. Based on this, a Lagrangian relaxation method and cyclic gradient iteration are combined to project actions into a feasible safe region. Furthermore, a Multi-hop and Multi-layer perception (MLP) mixed Attention Mechanism (MMAM) is incorporated into the actor-critic network, enabling the policy to adapt to dynamic traffic and overcome permutation sensitivity challenges. This allows the policy to focus more effectively on surrounding potential risks while enhancing the identification of passing opportunities. Simulation tests are conducted on different tasks at unsignalized intersections. The results show that the proposed approach effectively reduces collision rates and improves crossing efficiency in comparison to baseline algorithms. Additionally, our ablation experiments demonstrate the benefits of incorporating risk-awareness and MMAM into RL.

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@article{leng2025_2503.19690,
  title={ Risk-Aware Reinforcement Learning for Autonomous Driving: Improving Safety When Driving through Intersection },
  author={ Bo Leng and Ran Yu and Wei Han and Lu Xiong and Zhuoren Li and Hailong Huang },
  journal={arXiv preprint arXiv:2503.19690},
  year={ 2025 }
}
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