Lane-Merging Using Policy-based Reinforcement Learning and Post-Optimization
Hart, Patrick, Rychly, Leonard, Knol, Alois
–arXiv.org Artificial Intelligence
Many current behavior generation methods struggle to handle real-world traffic situations as they do not scale well with complexity. However, behaviors can be learned off-line using data-driven approaches. Especially, reinforcement learning is promising as it implicitly learns how to behave utilizing collected experiences. In this work, we combine policy-based reinforcement learning with local optimization to foster and synthesize the best of the two methodologies. The policy-based reinforcement learning algorithm provides an initial solution and guiding reference for the post-optimization. Therefore, the optimizer only has to compute a single homotopy class, e.g.\ drive behind or in front of the other vehicle. By storing the state-history during reinforcement learning, it can be used for constraint checking and the optimizer can account for interactions. The post-optimization additionally acts as a safety-layer and the novel method, thus, can be applied in safety-critical applications. We evaluate the proposed method using lane-change scenarios with a varying number of vehicles.
arXiv.org Artificial Intelligence
Mar-6-2020
- Country:
- Europe
- Sweden > Stockholm
- Stockholm (0.04)
- Germany
- North Rhine-Westphalia > Upper Bavaria
- Munich (0.04)
- Bavaria > Upper Bavaria
- Munich (0.04)
- North Rhine-Westphalia > Upper Bavaria
- Sweden > Stockholm
- Europe
- Genre:
- Research Report > Promising Solution (0.35)
- Technology: