Safety and efficiency are crucial for autonomous driving in roundabouts,
especially in the context of mixed traffic where autonomous vehicles (AVs) and
human-driven vehicles coexist. This paper introduces a learning-based algorithm
tailored to foster safe and efficient driving behaviors across varying levels
of traffic flows in roundabouts. The proposed algorithm employs a deep
Q-learning network to effectively learn safe and efficient driving strategies
in complex multi-vehicle roundabouts. Additionally, a KAN (Kolmogorov-Arnold
network) enhances the AVs' ability to learn their surroundings robustly and
precisely. An action inspector is integrated to replace dangerous actions to
avoid collisions when the AV interacts with the environment, and a route
planner is proposed to enhance the driving efficiency and safety of the AVs.
Moreover, a model predictive control is adopted to ensure stability and
precision of the driving actions. The results show that our proposed system
consistently achieves safe and efficient driving whilst maintaining a stable
training process, as evidenced by the smooth convergence of the reward function
and the low variance in the training curves across various traffic flows.
Compared to state-of-the-art benchmarks, the proposed algorithm achieves a
lower number of collisions and reduced travel time to destination.Comment: 15 pages, 12 figures, submitted to an IEEE journa