ADLight: A Universal Approach of Traffic Signal Control with Augmented Data Using Reinforcement Learning

10/24/2022
by   Maonan Wang, et al.
1

Traffic signal control has the potential to reduce congestion in dynamic networks. Recent studies show that traffic signal control with reinforcement learning (RL) methods can significantly reduce the average waiting time. However, a shortcoming of existing methods is that they require model retraining for new intersections with different structures. In this paper, we propose a novel reinforcement learning approach with augmented data (ADLight) to train a universal model for intersections with different structures. We propose a new agent design incorporating features on movements and actions with set current phase duration to allow the generalized model to have the same structure for different intersections. A new data augmentation method named movement shuffle is developed to improve the generalization performance. We also test the universal model with new intersections in Simulation of Urban MObility (SUMO). The results show that the performance of our approach is close to the models trained in a single environment directly (only a 5 training time, which saves a lot of computational resources in scalable operations of traffic lights.

READ FULL TEXT

page 5

page 7

page 8

research
05/12/2019

Learning Phase Competition for Traffic Signal Control

Increasingly available city data and advanced learning techniques have e...
research
07/13/2021

A Deep Reinforcement Learning Approach for Traffic Signal Control Optimization

Inefficient traffic signal control methods may cause numerous problems, ...
research
11/19/2022

LibSignal: An Open Library for Traffic Signal Control

This paper introduces a library for cross-simulator comparison of reinfo...
research
09/17/2020

GeneraLight: Improving Environment Generalization of Traffic Signal Control via Meta Reinforcement Learning

The heavy traffic congestion problem has always been a concern for moder...
research
01/24/2021

Multi-intersection Traffic Optimisation: A Benchmark Dataset and a Strong Baseline

The control of traffic signals is fundamental and critical to alleviate ...
research
10/11/2021

Scalable Traffic Signal Controls using Fog-Cloud Based Multiagent Reinforcement Learning

Optimizing traffic signal control (TSC) at intersections continues to po...
research
04/26/2022

Multi-Agent Reinforcement Learning for Traffic Signal Control through Universal Communication Method

How to coordinate the communication among intersections effectively in r...

Please sign up or login with your details

Forgot password? Click here to reset