Litcius/Paper detail

Regional Multi-Agent Cooperative Reinforcement Learning for City-Level Traffic Grid Signal Control

Yisha Li, Ya Zhang, Xinde Li, Changyin Sun

2024IEEE/CAA Journal of Automatica Sinica22 citationsDOI

Abstract

This article studies the effective traffic signal control problem of multiple intersections in a city-level traffic system. A novel regional multi-agent cooperative reinforcement learning algorithm called RegionSTLight is proposed to improve the traffic efficiency. Firstly a regional multi-agent Q-learning framework is proposed, which can equivalently decompose the global Q value of the traffic system into the local values of several regions. Based on the framework and the idea of human-machine cooperation, a dynamic zoning method is designed to divide the traffic network into several strong-coupled regions according to real-time traffic flow densities. In order to achieve better cooperation inside each region, a lightweight spatio-temporal fusion feature extraction network is designed. The experiments in synthetic, real-world and city-level scenarios show that the proposed RegionSTLight converges more quickly, is more stable, and obtains better asymptotic performance compared to state-of-the-art models.

Topics & Concepts

Reinforcement learningTraffic signalGridComputer scienceReinforcementControl (management)SIGNAL (programming language)Transport engineeringArtificial intelligenceReal-time computingPsychologyGeographyEngineeringSocial psychologyGeodesyProgramming languageTraffic control and management