A Machine Learning Method for Dynamic Traffic Control and Guidance on Freeway Networks

Kaige Wen, Shiru Qu, Yumei Zhang
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引用次数: 5

Abstract

A distributed approach to Reinforcement Learning in tasks of ramp metering and dynamic route guidance is presented. The problem domain, a freeway integration control application, is formulated as a distributed reinforcement learning problem. The DRL approach was implemented via a multi-agent control architecture where the decision agent was assigned to each of the on-ramp or VMS. The return of each agent is simultaneously updating a single shared policy. The control strategy’s efficiency is demonstrated through its application to the simple freeway network. Analyses of simulation results using this approach show significant improvement over traditional local control, especially for the case of large traffic demand. Using the DRL approach, the TTS of the Network has been reduced by 20% under the heavy demands.
高速公路网络动态交通控制与诱导的机器学习方法
提出了一种用于匝道测量和动态路径引导任务的分布式强化学习方法。问题域是一个高速公路集成控制应用,它被表述为一个分布式强化学习问题。DRL方法是通过多代理控制体系结构实现的,其中决策代理被分配给每个入站或VMS。每个代理的返回同时更新单个共享策略。通过在简单高速公路网络中的应用,验证了该控制策略的有效性。仿真结果分析表明,该方法比传统的局部控制方法有明显的改进,特别是在交通需求较大的情况下。采用DRL方法,在大容量需求下,网络的TTS降低了20%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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