Large-Scale Traffic Signal Control Using a Novel Multi-Agent Reinforcement Learning
Large-Scale Traffic Signal Control Using a Novel Multi-Agent Reinforcement Learning
Finding the optimal signal timing strategy is a difficult task for the problem of large-scale traffic signal control (TSC). Multi-Agent Reinforcement Learning (MARL) is a promising method to solve this problem. However, there is still room for improvement in extending to large-scale problems and modeling the behaviors of other agents for each individual agent. In this paper, a new MARL, called Cooperative double Q-learning (Co-DQL), is proposed, which has several prominent features. It uses a highly scalable independent double Q-learning method based on double estimators and the UCB policy, which can eliminate the over-estimation problem existing in traditional independent Q-learning while ensuring exploration. It uses mean field approximation to model the interaction among agents, thereby making agents learn a better cooperative strategy. In order to improve the stability and robustness of the learning process, we introduce a new reward allocation mechanism and a local state sharing method. In addition, we analyze the convergence properties of the proposed algorithm. Co-DQL is applied on TSC and tested on a multi-traffic signal simulator. According to the results obtained on several traffic scenarios, Co- DQL outperforms several state-of-the-art decentralized MARL algorithms. It can effectively shorten the average waiting time of the vehicles in the whole road system.
Xinghua Chai、Liangjun Ke、Zhimin Qiao、Xiaoqiang Wang
公路运输工程自动化技术、自动化技术设备计算技术、计算机技术
Xinghua Chai,Liangjun Ke,Zhimin Qiao,Xiaoqiang Wang.Large-Scale Traffic Signal Control Using a Novel Multi-Agent Reinforcement Learning[EB/OL].(2019-08-10)[2025-05-01].https://arxiv.org/abs/1908.03761.点此复制
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