Connected Autonomous Vehicle
Connected autonomous vehicles (CAVs) aim to improve traffic efficiency and safety through cooperative driving, leveraging vehicle-to-everything (V2X) communication and advanced perception. Current research heavily focuses on developing robust and efficient algorithms for cooperative decision-making, trajectory prediction, and collision avoidance, often employing deep reinforcement learning, transformer networks, and model predictive control. These advancements are crucial for addressing challenges like communication limitations, handling uncertainty in mixed-traffic environments, and ensuring safety guarantees, ultimately impacting the development of safer and more efficient transportation systems.
Papers
Cooperative Collision Avoidance in a Connected Vehicle Environment
Sukru Yaren Gelbal, Sheng Zhu, Gokul Arvind Anantharaman, Bilin Aksun Guvenc, Levent Guvenc
Optimal Control of Connected Automated Vehicles with Event-Triggered Control Barrier Functions: a Test Bed for Safe Optimal Merging
Ehsan Sabouni, H. M. Sabbir Ahmad, Wei Xiao, Christos G. Cassandras, Wenchao Li