Deep Multi-Agent Reinforcement Learning for Highway On-Ramp Merging in Mixed Traffic

Michigan State University · Clemson University

Indexed incrossref

Abstract

On-ramp merging is a challenging task for autonomous vehicles (AVs), especially in mixed traffic where AVs coexist with human-driven vehicles (HDVs). In this paper, we formulate the mixed-traffic highway on-ramp merging problem as a multi-agent reinforcement learning (MARL) problem, where the AVs (on both merge lane and through lane) collaboratively learn a policy to adapt to HDVs to maximize the traffic throughput. We develop an efficient and scalable MARL framework that can be used in dynamic traffic where the communication topology could be time-varying. Parameter sharing and local rewards are exploited to foster inter-agent cooperation while achieving great scalability. An action masking scheme is employed…

Citation impact

197
total citations
FWCI
33.69
Percentile
100%
References
85
Citations per year

Authors

7

Topics & keywords

Keywords
  • Reinforcement learning
  • Scalability
  • Computer science
  • Supervisor
  • Exploit
  • Distributed computing
  • Artificial intelligence
  • Computer security
No related works found for this paper.

Funding