CVLight: Deep Reinforcement Learning for Adaptive Traffic Signal Control with Connected Vehicles

04/21/2021
by   Wangzhi Li, et al.
0

This paper develops a reinforcement learning (RL) scheme for adaptive traffic signal control (ATSC), called "CVLight", that leverages data collected only from connected vehicles (CV). Seven types of RL models are proposed within this scheme that contain various state and reward representations, including incorporation of CV delay and green light duration into state and the usage of CV delay as reward. To further incorporate information of both CV and non-CV into CVLight, an algorithm based on actor-critic, A2C-Full, is proposed where both CV and non-CV information is used to train the critic network, while only CV information is used to update the policy network and execute optimal signal timing. These models are compared at an isolated intersection under various CV market penetration rates. A full model with the best performance (i.e., minimum average travel delay per vehicle) is then selected and applied to compare with state-of-the-art benchmarks under different levels of traffic demands, turning proportions, and dynamic traffic demands, respectively. Two case studies are performed on an isolated intersection and a corridor with three consecutive intersections located in Manhattan, New York, to further demonstrate the effectiveness of the proposed algorithm under real-world scenarios. Compared to other baseline models that use all vehicle information, the trained CVLight agent can efficiently control multiple intersections solely based on CV data and can achieve a similar or even greater performance when the CV penetration rate is no less than 20

READ FULL TEXT

page 8

page 13

page 22

research
09/29/2021

Deep Reinforcement Q-Learning for Intelligent Traffic Signal Control with Partial Detection

Intelligent traffic signal controllers, applying DQN algorithms to traff...
research
10/06/2022

Lyapunov Function Consistent Adaptive Network Signal Control with Back Pressure and Reinforcement Learning

This research studies the network traffic signal control problem. It use...
research
06/07/2023

Adaptive Frequency Green Light Optimal Speed Advisory based on Hybrid Actor-Critic Reinforcement Learning

Green Light Optimal Speed Advisory (GLOSA) system suggests speeds to veh...
research
10/17/2020

Assessment of Reward Functions in Reinforcement Learning for Multi-Modal Urban Traffic Control under Real-World limitations

Reinforcement Learning is proving a successful tool that can manage urba...
research
04/05/2023

HumanLight: Incentivizing Ridesharing via Human-centric Deep Reinforcement Learning in Traffic Signal Control

Single occupancy vehicles are the most attractive transportation alterna...
research
04/21/2021

Reinforcement Learning for Traffic Signal Control: Comparison with Commercial Systems

Recently, Intelligent Transportation Systems are leveraging the power of...

Please sign up or login with your details

Forgot password? Click here to reset