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RSU-assisted V2X message fusion via PC5 and Uu with actor-critic modeling for autonomous driving under intersection scenario
- Aslam, Sawera;
- Khan, Daud;
- Mondal, Sudeb;
- Chang, Kyunghi
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1SCOPUS
1초록
Autonomous driving systems rely heavily on effective data fusion from Vehicle-to-Everything (V2X) networks, where accurate decisions depend on integrating diverse messages from multiple communication interfaces. However, current single-interface communication methods, either PC5 or Uu, limit the achievable autonomy level due to insufficient reliability and situational awareness. To address these limitations, this paper proposes an efficient RSU-centered Message-level fusion framework tailored for intersection-based autonomous driving. The proposed approach strategically assigns CAM, CPM, and SPATEM to the PC5 interface, while DENM and MAPEM are assigned to the Uu interface. A confidence-weighted fusion algorithm is implemented at the RSU aligns timestamps, filters inconsistent inputs, and resolves conflicts to generate unified situational awareness messages every 100 ms. The onboard decision-making model employs a CNN-GRU enhanced Actor-Critic network to optimize decisions for intelligent lane changing, collision avoidance, and traffic flow management. Simulation outcomes confirm that the proposed dual-interface fusion significantly enhances performance compared to single-interface systems, improving the packet delivery ratio to 0.75 at 300 m and achieving decision accuracy improvements of approximately 14-25% across key use cases. Consequently, our framework meets the criteria for autonomy sub-level L4-C, providing a robust foundation for advanced intersection-based autonomous driving systems.
키워드
- 제목
- RSU-assisted V2X message fusion via PC5 and Uu with actor-critic modeling for autonomous driving under intersection scenario
- 저자
- Aslam, Sawera; Khan, Daud; Mondal, Sudeb; Chang, Kyunghi
- 발행일
- 2025-12
- 유형
- Article
- 권
- 56