Full title—Multi-Agent Deep Reinforcement Learning to Manage Connected Autonomous Vehicles at Tomorrow’s Intersections
In this paper, we present a new advanced approach to AIM based on end-to-end Multi-Agent Deep Reinforcement Learning (MADRL) and trained via Curriculum through Self-Play, called advanced Reinforced AIM (adv.RAIM). adv.RAIM can autonomously learn the complex dynamics of real-life traffic, and then provide a new path for building smarter AIM capable of proactively controlling CAV speed at intersections.
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The results show impressive improvements when compared to traffic light control techniques, as well as better performance than other recently proposed AIMs, highlighting the advantages of using MADRL.
Full Article: IEEE Transactions on Vehicular Technology, Early Access, April 2022 |