交通信号协调的多代理深度强化学习方法

IF 2.3 4区 工程技术 Q2 ENGINEERING, ELECTRICAL & ELECTRONIC
Ta-Yin Hu, Zhuo-Yu Li
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引用次数: 0

摘要

信号控制的目的是为相互竞争的交通流分配时间,以确保安全。人工智能使交通研究人员对自适应交通信号控制产生了更大的兴趣,最近的文献证实,深度强化学习(DRL)可以有效地应用于自适应交通信号控制。深度神经网络增强了强化学习的学习潜力。本研究采用 DRL 方法--双深度 Q 网络来训练本地代理。每个本地代理独立学习,以适应区域交通流量和动态。完成学习后,创建一个全局代理,整合并统一各局部代理选择的行动策略,以实现交通信号协调的目的。交通流条件是通过模拟城市流动性来模拟的。所提方法的优点包括提高交叉路口的效率,最大限度地减少车辆的总体平均等待时间。与 PASSER-V 和预定时信号设置策略的结果相比,所提出的多代理强化学习模型明显改善了车辆平均等待时间和队列长度。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A multi-agent deep reinforcement learning approach for traffic signal coordination

A multi-agent deep reinforcement learning approach for traffic signal coordination

The purpose of signal control is to allocate time for competing traffic flows to ensure safety. Artificial intelligence has made transportation researchers more interested in adaptive traffic signal control, and recent literature confirms that deep reinforcement learning (DRL) can be effectively applied to adaptive traffic signal control. Deep neural networks enhance the learning potential of reinforcement learning. This study applies the DRL method, Double Deep Q-Network, to train local agents. Each local agent learns independently to accommodate the regional traffic flows and dynamics. After completing the learning, a global agent is created to integrate and unify the action policies selected by each local agent to achieve the purpose of traffic signal coordination. Traffic flow conditions are simulated through the simulation of urban mobility. The benefits of the proposed approach include improving the efficiency of intersections and minimizing the overall average waiting time of vehicles. The proposed multi-agent reinforcement learning model significantly improves the average vehicle waiting time and queue length compared with the results from PASSER-V and pre-timed signal setting strategies.

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来源期刊
IET Intelligent Transport Systems
IET Intelligent Transport Systems 工程技术-运输科技
CiteScore
6.50
自引率
7.40%
发文量
159
审稿时长
3 months
期刊介绍: IET Intelligent Transport Systems is an interdisciplinary journal devoted to research into the practical applications of ITS and infrastructures. The scope of the journal includes the following: Sustainable traffic solutions Deployments with enabling technologies Pervasive monitoring Applications; demonstrations and evaluation Economic and behavioural analyses of ITS services and scenario Data Integration and analytics Information collection and processing; image processing applications in ITS ITS aspects of electric vehicles Autonomous vehicles; connected vehicle systems; In-vehicle ITS, safety and vulnerable road user aspects Mobility as a service systems Traffic management and control Public transport systems technologies Fleet and public transport logistics Emergency and incident management Demand management and electronic payment systems Traffic related air pollution management Policy and institutional issues Interoperability, standards and architectures Funding scenarios Enforcement Human machine interaction Education, training and outreach Current Special Issue Call for papers: Intelligent Transportation Systems in Smart Cities for Sustainable Environment - https://digital-library.theiet.org/files/IET_ITS_CFP_ITSSCSE.pdf Sustainably Intelligent Mobility (SIM) - https://digital-library.theiet.org/files/IET_ITS_CFP_SIM.pdf Traffic Theory and Modelling in the Era of Artificial Intelligence and Big Data (in collaboration with World Congress for Transport Research, WCTR 2019) - https://digital-library.theiet.org/files/IET_ITS_CFP_WCTR.pdf
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