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A Multi-Agent Deep Reinforcement Learning Coordination Framework for Connected and Automated Vehicles at Merging Roadways

Sai Krishna Sumanth Nakka, Behdad Chalaki, Andreas A. Malikopoulos

20222022 American Control Conference (ACC)21 citationsDOI

Abstract

The steady increase in the number of vehicles operating on the highways continues to exacerbate congestion, accidents, energy consumption, and greenhouse gas emissions. Emerging mobility systems, e.g., connected and automated vehicles (CAVs), have the potential to directly address these issues and improve transportation network efficiency and safety. In this paper, we consider a highway merging scenario and propose a framework for coordinating CAVs such that stop-and-go driving is eliminated. We use a decentralized form of the actor-critic approach to deep reinforcement learning—multi-agent deep deterministic policy gradient. We demonstrate the coordination of CAVs through numerical simulations and show that a smooth traffic flow is achieved by eliminating stop-and-go driving.

Topics & Concepts

Reinforcement learningComputer scienceEnergy consumptionGreenhouse gasTraffic flow (computer networking)Vehicle dynamicsTraffic congestionTransport engineeringDistributed computingSimulationArtificial intelligenceAutomotive engineeringEngineeringComputer networkBiologyElectrical engineeringEcologyTraffic control and managementTransportation and Mobility InnovationsAutonomous Vehicle Technology and Safety
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