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Beyond Conservative Automated Driving in Multi-Agent Scenarios via Coupled Model Predictive Control and Deep Reinforcement Learning

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Automated driving at unsignalized intersections is challenging due to complex multi-vehicle interactions and the need to balance safety and efficiency. Model Predictive Control (MPC) offers structured constraint handling through optimization but relies on hand-crafted rules that often produce overly conservative behavior. Deep Reinforcement Learning (RL) learns adaptive behaviors from experience but often struggles with safety assurance and generalization to unseen environments. In this study, we present an integrated MPC-RL framework to improve navigation performance in multi-agent scenarios. Experiments show that MPC-RL outperforms standalone MPC and end-to-end RL across three traffic-density levels. Collectively, MPC-RL reduces the collision rate by 21% and improves the success rate by 6.5% compared to pure MPC. We further evaluate zero-shot transfer to a highway merging scenario without retraining. Both MPC-based methods transfer substantially better than end-to-end PPO, which highlights the role of the MPC backbone in cross-scenario robustness. The framework also shows faster loss stabilization than end-to-end RL during training, which indicates a reduced learning burden. These results suggest that the integrated approach can improve the balance between safety performance and efficiency in multi-agent intersection scenarios, while the MPC component provides a strong foundation for generalization across driving environments. The implementation code is available open-source.

Saeed Rahmani, G\"ozde K\"orpe, Zhenlin (Gavin) Xu, Bruno Brito, Simeon Craig Calvert, Bart van Arem• 2026

Related benchmarks

TaskDatasetResultRank
Autonomous NavigationIntersection Easy 1,000 episodes per method
Success Rate94.8
3
Autonomous NavigationIntersection Moderate 1,000 episodes per method
Success Rate82.6
3
Autonomous NavigationIntersection Hard 1,000 episodes per method
Success Rate67.3
3
Autonomous NavigationIntersection (Pooled)
Success Rate81.6
3
Highway MergingHighway Merging Easy
Success Rate100
3
Highway MergingHighway Merging Moderate
Success Rate100
3
Highway MergingHighway Merging Hard
Success Rate83.3
3
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