Joint Pedestrian and Vehicle Traffic Optimization in Urban Environments using Reinforcement Learning
By: Bibek Poudel , Xuan Wang , Weizi Li and more
Potential Business Impact:
Makes traffic lights smarter for cars and people.
Reinforcement learning (RL) holds significant promise for adaptive traffic signal control. While existing RL-based methods demonstrate effectiveness in reducing vehicular congestion, their predominant focus on vehicle-centric optimization leaves pedestrian mobility needs and safety challenges unaddressed. In this paper, we present a deep RL framework for adaptive control of eight traffic signals along a real-world urban corridor, jointly optimizing both pedestrian and vehicular efficiency. Our single-agent policy is trained using real-world pedestrian and vehicle demand data derived from Wi-Fi logs and video analysis. The results demonstrate significant performance improvements over traditional fixed-time signals, reducing average wait times per pedestrian and per vehicle by up to 67% and 52% respectively, while simultaneously decreasing total wait times for both groups by up to 67% and 53%. Additionally, our results demonstrate generalization capabilities across varying traffic demands, including conditions entirely unseen during training, validating RL's potential for developing transportation systems that serve all road users.
Similar Papers
Large-Scale Mixed-Traffic and Intersection Control using Multi-agent Reinforcement Learning
Machine Learning (CS)
Robot cars make traffic flow faster.
Adaptive Traffic Signal Control based on Multi-Agent Reinforcement Learning. Case Study on a simulated real-world corridor
Multiagent Systems
Makes traffic lights smarter, reducing car waits.
Impact of Collective Behaviors of Autonomous Vehicles on Urban Traffic Dynamics: A Multi-Agent Reinforcement Learning Approach
Multiagent Systems
Self-driving cars can make traffic faster.