使用深度强化学习调整街道规划

A. Alhassan, Muhammed Saeed
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引用次数: 0

摘要

交通流优化是一个活跃的研究方向,尽管在这个主题上已经写了大量的文献,但主要的问题是在每个场景下用于控制交通灯代理的输入信息的高维,这里的信息是指由交通摄像头和探测器连续采样的交通数据。所有的论文都集中在控制交通信号灯的周期,把街道规划作为一个给定的。对于一个不解决人口需求分布问题的街道规划,控制红绿灯周期并不能彻底解决交通拥堵问题。由于没有能力建造新的街道和不断变化的人口需求,唯一需要改变的就是街道规划。因此,本研究提出了控制这些街道方向(单向,双向)的想法,以匹配一个地区不断变化的人口的新交通需求,这一任务很容易通过使用深度强化学习来完成。深度强化学习结合了强化学习对任何新场景的泛化和处理大输入空间的能力以及收敛到最小深度学习的能力,因为研究中的动作空间是离散空间-街道方向-我们选择使用Deep Q-Networks - DQN -在4个不同的SUMO -模拟城市交通-模拟网络上进行了几个实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Adjusting Street Plans Using Deep Reinforcement Learning
Traffic flow optimization is an active line of research despite the wealth of literature been written on the topic, the major problem is the high dimension of input information that is available for controlling the traffic lights agents at each scenario, by the information we mean the traffic data that is continuously sampled by traffic cameras and detectors. All the papers came out focused on controlling the traffic lights cycle taking the street plans as a given. Controlling a traffic light cycle for a street plan that does not solve the population demand distribution will not end traffic congestion completely. Because of the inability to build new streets and a continuously changing population demand, the only thing to change is the streets plan. So This study proposes the idea of controlling the directions of these streets (one-way, two-ways) to match the new transportation demands of the ever-changing population in an area a task that is easy to do by using deep reinforcement learning.Deep Reinforcement learning combines both the generalization of reinforcement learning to any new scenario and the ability to handle large input spaces and convergences to minima to deep learning, since the action space in the study is discrete space –streets directions – we chose to use Deep Q-Networks – DQN – several experiments are performed on 4 different SUMO – Simulation of Urban Mobility – simulation networks.
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